{
  "metadata": {
    "journal": "Natural Hazards",
    "manuscript_title": "Flood Response under Crowd Misinformation: Robust Belief Fusion and UAV Verification Prioritization",
    "authors": [
      "Hailong Li",
      "Xiangnan Song",
      "Ya Li"
    ],
    "corresponding_author": "Hailong Li <11172@zzrvtc.edu.cn>",
    "prepared": "2026-06-21",
    "description": "Compact Online Resource 1 data/results file. It consolidates the de-identified Zhengzhou report data, credibility priors, and all core result tables used by the manuscript into one flat JSON file for Editorial Manager upload.",
    "companion_check_script": "ESM_3_core_reproducibility_check.py"
  },
  "data": {
    "reports_geocoded_real": [
      {
        "report_id": "wb_0000",
        "timestamp": "2021-07-25 00:33:56",
        "raw_text": "河南暴雨互助24:14已核实   被困人信号不好时有时无，手机也快没电了安全就是被困在楼上了。需要救援。位置北环前河头社区里面1号楼2单元，进来社区门左拐最里面    联系电话为159****65",
        "location_text": "河南省洛阳市大坪乡",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 113.43701899999999,
        "lat": 33.421821,
        "src": "S3_weibo",
        "dedup_group": "f61eacd541",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.43701899999999,
        "matched_lat": 33.421821,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0001",
        "timestamp": "2021-07-25 00:36:09",
        "raw_text": "河南暴雨互助#新乡暴雨# 帮老乡求助❗️‼️河南新乡卫辉#卫辉暴雨##河南暴雨互助# 现在水和吃的是足够的然后还需要，消毒用品，药品，被褥，内裤，袜子，衣服，卫生纸，风油精目前状况是大坝口缺人力 救援物资，铁锹，手电筒，编织袋，游泳圈，发电机，探照灯，沙子。万达安置了三千名左右的受灾居民，目前被褥仍不够用，希望家在附近有闲置被褥的可以来万达三号门送一下，联系人时昊阳，电话152****22，谢谢，另需要志愿者晚上看护物资，到明天早上🙏  发电机2台，被子4000套。现在需要的联系志愿者：赵天翔166****89新乡牧野区急需藿香正气水和葡萄糖 所有救援队伍体力透支联系人：孔楚媛：130****41拜托河南的伙伴转发一下🙏🙏🙏",
        "location_text": "河南省新乡市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.91551299999999,
        "lat": 35.321023,
        "src": "S3_weibo",
        "dedup_group": "84890aaf9c",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.91551299999999,
        "matched_lat": 35.321023,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0002",
        "timestamp": "2021-07-25 00:36:14",
        "raw_text": "河南暴雨互助十万火急！鹤壁市浚县新镇镇北刘庄村，一百多人被困，没有专业救援人员，全靠村民死撑，一直给上级打电话，被困三天了也没有得到救助，现在口子已经开到五十米，上游泄洪量在激增，他们真的撑不住了，请求政府增派人手，派专业人员救救他们吧！！！",
        "location_text": "河南省鹤壁市新镇镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人",
        "verified": "有效",
        "urgency": "",
        "lng": 114.303871,
        "lat": 35.509993,
        "src": "S3_weibo",
        "dedup_group": "3c89f0c28f",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.303871,
        "matched_lat": 35.509993,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0003",
        "timestamp": "2021-07-25 00:38:49",
        "raw_text": "#卫辉暴雨##新乡##河南暴雨互助# 🙏 现需物资清单  以及相关捐赠事宜如果谁正好有以上物资 请联系图中电话 感谢感谢 郑州",
        "location_text": "河南省郑州市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.631419,
        "lat": 34.753439,
        "src": "S3_weibo",
        "dedup_group": "930e15b2c4",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.631419,
        "matched_lat": 34.753439,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0004",
        "timestamp": "2021-07-25 00:39:05",
        "raw_text": "#河南暴雨互助#新乡万达广场3号门这里还欠需被褥，希望爱心人士捐赠。电话186****56 已核实23:18分",
        "location_text": "河南省新乡市荣校路街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.912396,
        "lat": 35.322032,
        "src": "S3_weibo",
        "dedup_group": "066c621827",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.912396,
        "matched_lat": 35.322032,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0005",
        "timestamp": "2021-07-25 00:34:40",
        "raw_text": "河南暴雨互助 7月25日中午需要:新乡市牧野区香山颐养院，目前桥北积水最深的位置，👉地点：共产主义大桥北1.5公里处。👉目前情况：现院内共有105人被困，其中年纪较大，行动不能自理的老人83人，工作人员22人，停水停电，手机信号不好。👉联系人：石女士158****00 👉老人需要大量成人纸尿裤，卫生纸！❗❗❗物资需要船只运输已亲自核实7月25日晚12点17",
        "location_text": "河南省新乡市城关街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人",
        "verified": "有效",
        "urgency": "",
        "lng": 113.79998,
        "lat": 35.471009,
        "src": "S3_weibo",
        "dedup_group": "e8d27f8504",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.79998,
        "matched_lat": 35.471009,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0006",
        "timestamp": "2021-07-24 21:06:01",
        "raw_text": "河南暴雨互助这是从鲁山漂流峡谷过来的救援队！希望去卫辉比较水深的地方援助！有水熟悉路的！他们在牧野路世青小学门口185****96    希望卫辉的转发一下！ 王承圆圆圆的微博视频",
        "location_text": "河南省新乡市花园街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人",
        "verified": "有效",
        "urgency": "",
        "lng": 113.88211799999999,
        "lat": 35.322839,
        "src": "S3_weibo",
        "dedup_group": "7a99cc1ab2",
        "label": "flooded_blocked",
        "label_confidence": 0.9,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.88211799999999,
        "matched_lat": 35.322839,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0007",
        "timestamp": "2021-07-25 00:42:39",
        "raw_text": "#河南暴雨互助#pyq里有人求助 新乡需要物资❗❗❗ 帮老乡求助❗️‼️河南新乡卫辉#卫辉暴雨##河南暴雨互助# 现在水和吃的是足够的然后还需要，消毒用品，药品，被褥，内裤，袜子，衣服，卫生纸，风油精目前状况是大坝口缺人力 救援物资，铁锹，手电筒，编织袋，游泳圈，发电机，探照灯，沙子。万达安置了三千名左右的受灾居民，目前被褥仍不够用，希望家在附近有闲置被褥的可以来万达三号门送一下，联系人时昊阳，电话152****22，谢谢，另需要志愿者晚上看护物资，到明天早上🙏  发电机2台，被子4000套。现在需要的联系志愿者：赵天翔166****89新乡牧野区急需藿香正气水和葡萄糖 所有救援队伍体力透支联系人：孔楚媛：130****41",
        "location_text": "河南省新乡市王村镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.830463,
        "lat": 35.334262,
        "src": "S3_weibo",
        "dedup_group": "0920d895f9",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.830463,
        "matched_lat": 35.334262,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0008",
        "timestamp": "2021-07-25 00:44:07",
        "raw_text": "#河南暴雨互助#已核实00:27  可以容纳300人 缺少被褥 ‼️‼️新乡和田育才小学为抗洪救灾尽微薄之力，腾出来了300个床位。但是缺少棉被和洗簌用品。夜晚还没有联系上住宿的救援人员和灾民，可以统一集中住宿。对接人: 吕方主任134****14王玉珏主任152****57（科隆大道与牧野路十字向东100米路南）",
        "location_text": "河南省新乡市洪门镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "帮助",
        "verified": "有效",
        "urgency": "",
        "lng": 113.920654,
        "lat": 35.27924,
        "src": "S3_weibo",
        "dedup_group": "ded60ff8d0",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.920654,
        "matched_lat": 35.27924,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0009",
        "timestamp": "2021-07-24 23:46:58",
        "raw_text": "河南暴雨互助【代发】各位请帮忙转发，我是新一街中学对面长顺家园乐高午托朱老师，可以给外地救援队提供180个床位，有水有电， 可以提供吃住洗澡，有需要的可以联系朱老师186****49，金老师166****41",
        "location_text": "河南省新乡市关堤乡",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "帮助",
        "verified": "有效",
        "urgency": "",
        "lng": 113.92370700000001,
        "lat": 35.252786,
        "src": "S3_weibo",
        "dedup_group": "caed59c7b4",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.92370700000001,
        "matched_lat": 35.252786,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0010",
        "timestamp": "2021-07-24 23:51:47",
        "raw_text": "[cp]河南暴雨互助求助[爱心]新乡市获嘉县应急管理局。急需铁锨，救人绳，水泵，胶鞋，皮划艇，冲锋舟，手灯，帐篷等河上救援用物品。如有以上物品可直接送到📍新乡市获嘉县应急管理局。李璇珂 155****95非常急！！！看到的还麻烦核实人咪西  24号11点34已核实！！ [/cp]",
        "location_text": "河南省新乡市城关镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.66953999999998,
        "lat": 35.27176,
        "src": "S3_weibo",
        "dedup_group": "278784f677",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.66953999999998,
        "matched_lat": 35.27176,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0011",
        "timestamp": "2021-07-25 00:52:22",
        "raw_text": "河南暴雨互助#崔志韩帮发# 7月25日中午需要:新乡市牧野区香山颐养院，目前桥北积水最深的位置，👉地点：共产主义大桥北1.5公里处。👉目前情况：现院内共有105人被困，其中年纪较大，行动不能自理的老人83人，工作人员22人，停水停电，手机信号不好。👉联系人：石女士158****00 👉老人需要大量成人纸尿裤，卫生纸！❗❗❗物资需要船只运输已亲自核实7月25日晚12点17",
        "location_text": "河南省新乡市唐庄镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 114.050174,
        "lat": 35.414843,
        "src": "S3_weibo",
        "dedup_group": 6131805468,
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.050174,
        "matched_lat": 35.414843,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0012",
        "timestamp": "2021-07-25 00:54:40",
        "raw_text": "河南暴雨互助#崔志韩# 已核实#崔志韩帮发# ❗️‼️河南新乡卫辉#卫辉暴雨##河南暴雨互助# 现在水和吃的是足够的然后还需要，消毒用品，药品，被褥，内裤，袜子，衣服，卫生纸，风油精目前状况是大坝口缺人力 救援物资，铁锹，手电筒，编织袋，游泳圈，发电机，探照灯，沙子。万达安置了三千名左右的受灾居民，目前被褥仍不够用，希望家在附近有闲置被褥的可以来万达三号门送一下，联系人时昊阳，电话152****22，谢谢，另需要志愿者晚上看护物资，到明天早上🙏  发电机2台，被子4000套。现在需要的联系志愿者：赵天翔166****89新乡牧野区急需藿香正气水和葡萄糖 所有救援队伍体力透支联系人：孔楚媛：130****41拜托河南的伙伴转发一下🙏🙏🙏",
        "location_text": "河南省新乡市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.91551299999999,
        "lat": 35.321023,
        "src": "S3_weibo",
        "dedup_group": "25565bca4b",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.91551299999999,
        "matched_lat": 35.321023,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0013",
        "timestamp": "2021-07-25 00:35:48",
        "raw_text": "河南暴雨互助#崔志韩##崔志韩帮发#  ❤️为爱接力，微薄之力❤️请传播：新乡市二十二中学成立了新的安置点，有捐献夏凉被，褥子，枕头的人士，可以直接送过去，校门口有人接应137****16 万老师",
        "location_text": "河南省新乡市健康路街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "无效",
        "urgency": "",
        "lng": 113.86955,
        "lat": 35.3036,
        "src": "S3_weibo",
        "dedup_group": "8b7e87aa81",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.86955,
        "matched_lat": 35.3036,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0014",
        "timestamp": "2021-07-25 00:38:48",
        "raw_text": "#河南暴雨救援# 🙏🙏#河南暴雨互助# 新乡二十二中学  安置点",
        "location_text": "河南省新乡市健康路街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "帮助",
        "verified": "有效",
        "urgency": "",
        "lng": 113.86955,
        "lat": 35.3036,
        "src": "S3_weibo",
        "dedup_group": "198541d797",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.86955,
        "matched_lat": 35.3036,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0015",
        "timestamp": "2021-07-25 00:58:15",
        "raw_text": "【以核实】【00:51】十万火急！！！！已经确认！！！【新乡获嘉急求皮划艇 救生衣 船】4000千人村庄，只有一个救生艇！生命危机！物资严重不足，期待关注！转发！协调电话：156****27@河南暴雨互助 河南暴雨互助",
        "location_text": "河南省新乡市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.663417,
        "lat": 35.265809000000004,
        "src": "S3_weibo",
        "dedup_group": "dd6be3fda8",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.663417,
        "matched_lat": 35.265809000000004,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0016",
        "timestamp": "2021-07-25 00:00:11",
        "raw_text": "河南暴雨互助#安阳暴雨# 帮转，安阳辛村镇抗洪急需援助！发布时间：2021年7月24日23时59分",
        "location_text": "河南省安阳市辛村镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 114.648983,
        "lat": 36.043746999999996,
        "src": "S3_weibo",
        "dedup_group": "7d30700edf",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.648983,
        "matched_lat": 36.043746999999996,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0017",
        "timestamp": "2021-07-25 01:00:59",
        "raw_text": "#河南暴雨救援##河南暴雨互助# [求助!!!!!!!!]已核实11:18【人命关天急需充电宝】 河南省新乡市牧野区新中大道北环路附近 需要充电宝！需要充电宝！联系人救援后勤135****72  短信两个老人 一级残障全身腐烂 不想放弃了",
        "location_text": "河南省新乡市牧野镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.937339,
        "lat": 35.343925,
        "src": "S3_weibo",
        "dedup_group": "24621a6a03",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.937339,
        "matched_lat": 35.343925,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0018",
        "timestamp": "2021-07-25 00:51:41",
        "raw_text": "河南暴雨互助帮老乡求助❗️‼️河南新乡卫辉#卫辉暴雨##河南暴雨互助# 现在水和吃的是足够的然后还需要，消毒用品，药品，被褥，内裤，袜子，衣服，卫生纸，风油精目前状况是大坝口缺人力 救援物资，铁锹，手电筒，编织袋，游泳圈，发电机，探照灯，沙子。万达安置了三千名左右的受灾居民，目前被褥仍不够用，希望家在附近有闲置被褥的可以来万达三号门送一下，联系人时昊阳，电话152****22，谢谢，另需要志愿者晚上看护物资，到明天早上🙏  发电机2台，被子4000套。现在需要的联系志愿者：赵天翔166****89新乡牧野区急需藿香正气水和葡萄糖 所有救援队伍体力透支联系人：孔楚媛：130****41拜托河南的伙伴转发一下🙏🙏🙏",
        "location_text": "河南省新乡市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.91551299999999,
        "lat": 35.321023,
        "src": "S3_weibo",
        "dedup_group": "b69ed6f4fd",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.91551299999999,
        "matched_lat": 35.321023,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0019",
        "timestamp": "2021-07-25 00:08:44",
        "raw_text": "#河南暴雨互助#志愿者招募明天早上9.30在郑州市中原西路郑州市疾控中心西隔壁的武警支队门口需要15名志愿者负责帮忙装运急救物资（这批物资将运往登封市），因紧缺人手，恳请有时间的志愿者帮助搬运。谢谢。联系人：登封市妇联李晓明：176****63。 郑州",
        "location_text": "河南省郑州市西流湖街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人",
        "verified": "有效",
        "urgency": "",
        "lng": 113.54141100000001,
        "lat": 34.75519,
        "src": "S3_weibo",
        "dedup_group": "1f8c5b485d",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.54141100000001,
        "matched_lat": 34.75519,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0021",
        "timestamp": "2021-07-25 01:19:45",
        "raw_text": "河南暴雨互助 [求助!!!!!!!!]已核实11:18【人命关天急需充电宝】 河南省新乡市牧野区新中大道北环路附近 需要充电宝！需要充电宝！联系人救援后勤135****72  短信两个老人 一级残障全身腐烂 不想放弃了 郑州",
        "location_text": "河南省郑州市经八路街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.672174,
        "lat": 34.774813,
        "src": "S3_weibo",
        "dedup_group": "4b4dc8fbec",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "经八路",
        "matched_type": "road",
        "matched_lon": 113.6635759,
        "matched_lat": 34.7717553,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0022",
        "timestamp": "2021-07-25 01:20:58",
        "raw_text": "#新乡暴雨# #河南暴雨救援# 河南暴雨互助 由于在洪水中连日奋战，新乡抗洪前线英雄们现在急需贴身衣物、T恤、裤头之类的，受卫辉市政府副市长孙建明188****70委托求助，目前差额巨大。请有上述储备物资的，同新乡卫辉市孙建明副市长联系。谢谢！🙏",
        "location_text": "河南省郑州市涉村镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.126421,
        "lat": 34.636252,
        "src": "S3_weibo",
        "dedup_group": "71cfda23ed",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.126421,
        "matched_lat": 34.636252,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0023",
        "timestamp": "2021-07-25 00:27:08",
        "raw_text": "[cp]河南暴雨互助新乡市   请求支援，107转盘东聂庄急需大量的沙袋，救生衣，大家积极转发一下。联系人：李具福书记137****28（已核实24日晚11:00） [/cp]",
        "location_text": "河南省新乡市蒲东街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 114.706984,
        "lat": 35.204285,
        "src": "S3_weibo",
        "dedup_group": "8fc18dc82d",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.706984,
        "matched_lat": 35.204285,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0024",
        "timestamp": "2021-07-25 00:31:13",
        "raw_text": "一直都在发求救一直都没有救援队快救救我的家吧🙏🙏@中国日报 @新乡早知道 @微博小秘书 河南暴雨互助#新乡# 郑州",
        "location_text": "河南省郑州市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "无效",
        "urgency": "",
        "lng": 113.631419,
        "lat": 34.753439,
        "src": "S3_weibo",
        "dedup_group": "0782462d18",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.631419,
        "matched_lat": 34.753439,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0025",
        "timestamp": "2021-07-25 01:32:28",
        "raw_text": "⚠️实时消息⚠️鹤壁市浚县新镇淇门西街村的泄洪口  村民全部在河堤上不敢回家！已核实！非救援人员不要联系！",
        "location_text": "河南省鹤壁市新镇镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 114.304927,
        "lat": 35.495521999999994,
        "src": "S3_weibo",
        "dedup_group": "86d543b66d",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.304927,
        "matched_lat": 35.495521999999994,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0026",
        "timestamp": "2021-07-25 01:38:59",
        "raw_text": "志愿河南河南暴雨互助#新乡暴雨##新乡暴雨求助# 河南凤泉区大块镇原庄村村委会这个位置3000多人，被困了2天了，刚刚我从别的群里得到的消息，确实是没有获救确实是没有获救，然后大家帮忙扩散一下，他们的村长电话，现在是完全打不通的，然后需要大家就是把消息扩散一下让附近的救援队看见，然后前往支援一下，如果有了解情况的可以联系一下我们，我们帮他们传递一下信息，原庄村大队电话139****30（目前已经联系不上了）",
        "location_text": "河南省新乡市大块镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 113.826923,
        "lat": 35.360354,
        "src": "S3_weibo",
        "dedup_group": "efef997cce",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.826923,
        "matched_lat": 35.360354,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0027",
        "timestamp": "2021-07-25 01:41:10",
        "raw_text": "#浚县新镇##浚县#河南暴雨互助卫生院员工被困医院，急需撤离！！！！！",
        "location_text": "河南省郑州市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 113.75938400000001,
        "lat": 34.771713,
        "src": "S3_weibo",
        "dedup_group": "9b5aab1969",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.75938400000001,
        "matched_lat": 34.771713,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0028",
        "timestamp": "2021-07-25 01:44:47",
        "raw_text": "7.25 01:37已核实帮忙转发！在下园，仁里屯附近救援的外来救援人员可以到小太阳舞蹈艺术学校休息，联系电话176****10[合十][合十][合十]提供吃饭住宿，已有志愿者报名随时在那边准备接应卫辉加油 （约能容纳200人）#卫辉暴雨##新乡##河南暴雨互助# 郑州",
        "location_text": "河南省郑州市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "有效",
        "urgency": "",
        "lng": 113.631419,
        "lat": 34.753439,
        "src": "S3_weibo",
        "dedup_group": "1d258f84b4",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.631419,
        "matched_lat": 34.753439,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0029",
        "timestamp": "2021-07-25 00:49:56",
        "raw_text": "[cp]河南暴雨互助帮转：大家好我们是退伍军人，我们有十八个战友，目前位于凤泉区荷宝高速公路G3511，若有善心人士可以提供住的地方请速与我们联系电话180****15谢谢[合十][合十][合十][合十]【已核实 7.25 00:23】他们救援了一天了，他们很累，我打电话问过了[苦涩][苦涩]请大家发发爱心 [/cp]",
        "location_text": "河南省新乡市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招地",
        "verified": "有效",
        "urgency": "",
        "lng": 113.91245900000001,
        "lat": 35.375665000000005,
        "src": "S3_weibo",
        "dedup_group": "6e63b0d096",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.91245900000001,
        "matched_lat": 35.375665000000005,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0031",
        "timestamp": "2021-07-25 01:58:08",
        "raw_text": "因泄洪原因，河南西华县水位已经上升红色警界线🚩 目前水位持续上涨📈 西华县城拉响一级警报 进入战备状态 临近乡镇人员撤离老家已达五天之久，急需抗洪救灾物资，橡皮艇，救生衣，及食物饮水与生活必需品，烦请大家帮忙转发扩散，感谢#周口泄洪##周口泄洪#河南暴雨互助",
        "location_text": "河南省郑州市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.75938400000001,
        "lat": 34.771713,
        "src": "S3_weibo",
        "dedup_group": "1c57739ae0",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.75938400000001,
        "matched_lat": 34.771713,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0032",
        "timestamp": "2021-07-25 01:59:58",
        "raw_text": "河南暴雨互助 紧急：我们是驰豫志愿者团，我们维护着一个线上物资互助对接平台，现在需要大量的后台对接人员负责对接录入系统的信息把需要物资的和捐赠物资的对接起来，要求20岁以上，会简单的在线协同办公系统的处理，有电脑，能打电话，白班夜班都需要，夜班优先！有工作经验的优先！感谢",
        "location_text": "河南省开封市东郊乡",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人",
        "verified": "有效",
        "urgency": "",
        "lng": 113.045429,
        "lat": 34.466628,
        "src": "S3_weibo",
        "dedup_group": "b460aed3a1",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.045429,
        "matched_lat": 34.466628,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0033",
        "timestamp": "2021-07-25 01:56:31",
        "raw_text": "河南暴雨互助 已核实核实人：走吧 核实时间：25日00:51十万火急！！！！已经确认！！！【新乡获嘉急求皮划艇 救生衣 船】4000千人村庄，只有一个救生艇！生命危机！物资严重不足，期待关注！转发！协调电话：156****27",
        "location_text": "河南省郑州市芝田镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 112.972967,
        "lat": 34.712278999999995,
        "src": "S3_weibo",
        "dedup_group": "56517069b0",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 112.972967,
        "matched_lat": 34.712278999999995,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0034",
        "timestamp": "2021-07-25 01:01:34",
        "raw_text": "河南暴雨互助 新乡告急！现在一线最缺的就是冲锋舟，有的救援队的船坏了，买船都是江浙一带，发货很慢，急缺船！河南永城水上救援队，目前在河师大落脚，有能联系到船的跟我联系，电话:166****67.25.00.56核实",
        "location_text": "河南省商丘市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 116.45556599999999,
        "lat": 33.934801,
        "src": "S3_weibo",
        "dedup_group": "31a5b02506",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 116.45556599999999,
        "matched_lat": 33.934801,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0036",
        "timestamp": "2021-07-25 02:07:21",
        "raw_text": "鹤壁市浚县新镇镇四面环水，洪水还在不断上涨！新镇镇医院全部员工和病号都还未转移！🆘#鹤壁暴雨救援# #河南暴雨互助#",
        "location_text": "河南省郑州市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 113.75938400000001,
        "lat": 34.771713,
        "src": "S3_weibo",
        "dedup_group": "828fac3581",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.75938400000001,
        "matched_lat": 34.771713,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0037",
        "timestamp": "2021-07-24 22:14:38",
        "raw_text": "河南暴雨互助请求救援，，，十万火急 搞机人的微博视频",
        "location_text": "河南省郑州市东风路街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 114.023553,
        "lat": 34.725217,
        "src": "S3_weibo",
        "dedup_group": "2f037af767",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "东风路",
        "matched_type": "road",
        "matched_lon": 113.65994258333336,
        "matched_lat": 34.797928866666666,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0038",
        "timestamp": "2021-07-25 01:59:07",
        "raw_text": "河南暴雨互助 明晚8－9点有一批救援物资车队出发从涪陵前往河南，还有捐赠物资的朋友请尽快我们。",
        "location_text": "河南省焦作市河雍街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 112.795957,
        "lat": 34.91115,
        "src": "S3_weibo",
        "dedup_group": "3a03061332",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 112.795957,
        "matched_lat": 34.91115,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0039",
        "timestamp": "2021-07-25 01:21:42",
        "raw_text": "河南暴雨互助河南暴雨互助已核实卫辉告急！！！开封蓝天救援队全队只有一艘皮划艇，救援进展艰难，哪里有皮划艇！救生衣！我们需要很多！求求大家帮帮我们，帮帮相亲们！！！送到城郊派出所的集结点我们会有人接！！求紧急扩散！电话：138****99",
        "location_text": "河南省洛阳市香鹿山镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 112.20686699999999,
        "lat": 34.539105,
        "src": "S3_weibo",
        "dedup_group": "dd514dea54",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 112.20686699999999,
        "matched_lat": 34.539105,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0040",
        "timestamp": "2021-07-23 23:24:59",
        "raw_text": "河南暴雨互助#新乡##新乡暴雨##新乡出现漫堤险情# 新乡市人民东路黄河口，沿胜利渠东边，上河城小区西门，彩虹桥，西牧村东口水位不断上升，急需人手！！！能去的去，不能去的转发",
        "location_text": "河南省新乡市卫北街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人",
        "verified": "有效",
        "urgency": "",
        "lng": 113.879274,
        "lat": 35.319274,
        "src": "S3_weibo",
        "dedup_group": "35adb97758",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.879274,
        "matched_lat": 35.319274,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0041",
        "timestamp": "2021-07-23 22:26:34",
        "raw_text": "#新乡暴雨求助##河南暴雨救援#河南暴雨互助 帮扩！古籍和孤本有危险，亟待救援！传统文化的损失是不可估量的。",
        "location_text": "河南省郑州市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人",
        "verified": "有效",
        "urgency": "",
        "lng": 113.75938400000001,
        "lat": 34.771713,
        "src": "S3_weibo",
        "dedup_group": "9e333bf82a",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.75938400000001,
        "matched_lat": 34.771713,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0042",
        "timestamp": "2021-07-24 00:38:27",
        "raw_text": "7.23日 12:37已核实🆘，建业同事蔡亚楠:183****13，出发地：新乡市，北环路与新中大道交汇处向东500米路北，龙悦湾前河头社区。目的地：去市区饮马口，四人，一个四岁的宝宝，三个大人。由于楼层二楼需要紧急转移，救援志愿者一家人，需附近朋友车辆帮忙转移，感谢🙏！河南暴雨互助#新乡暴雨求助##河南暴雨互助#",
        "location_text": "河南省郑州市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 113.75938400000001,
        "lat": 34.771713,
        "src": "S3_weibo",
        "dedup_group": "892d30a9eb",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.75938400000001,
        "matched_lat": 34.771713,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0043",
        "timestamp": "2021-07-24 01:21:46",
        "raw_text": "河南暴雨互助消息属实 请求支援“我早上开始发求救信息，打110、119、12345，都说让我别着急，等了一天没有一个救援队过来，大家情绪也都越来越不好，都开始自救，如果不是楼下大哥好心救我们，我和儿子还被困在水中，那里老人孩子非常多，还有老人独自在家的。请求救援队赶紧去凤泉区吧，”",
        "location_text": "河南省新乡市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 113.69237,
        "lat": 34.664171,
        "src": "S3_weibo",
        "dedup_group": "6f9a45df80",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.69237,
        "matched_lat": 34.664171,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0044",
        "timestamp": "2021-07-24 02:52:48",
        "raw_text": "#河南暴雨互助##新乡# 求求大家了！！这个还没有被救！！！！！！寺庄顶西铁路道口往北300米路西有三个大人举着两个孩子 水已经到胸口了 急‼️ 电话132****83 核实过非救援队不要再打电话了‼️真的很急，急扩#河南暴雨救援##河南暴雨互助# @河南暴雨互助 @青竺Aoko: 2.30 位置没有变化！！！！急！！！！！！寺庄顶西铁路道口往北300米路西！",
        "location_text": "河南省新乡市路寨乡",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 113.894671,
        "lat": 35.349934000000005,
        "src": "S3_weibo",
        "dedup_group": "dd3df7d9f4",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.894671,
        "matched_lat": 35.349934000000005,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0045",
        "timestamp": "2021-07-23 21:34:40",
        "raw_text": "#河南暴雨互助##鹤壁暴雨# 【求扩散求转发】河南鹤壁淇县物资告急！转发市文明办通知：   现急需物资：救援淇县的战士们现在急缺手电、袜子、热盒饭 、充电宝、大功率电瓶 ，哪个单位有资源的，请联系185****61刘晓洋军医（支援淇县的部队方面联系人）!",
        "location_text": "河南省鹤壁市桥盟街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 114.185581,
        "lat": 35.629690000000004,
        "src": "S3_weibo",
        "dedup_group": "22c329bce5",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.185581,
        "matched_lat": 35.629690000000004,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0046",
        "timestamp": "2021-07-24 23:17:23",
        "raw_text": "河南暴雨互助 彩虹桥没决堤！彩虹桥没决堤！彩虹桥没决堤！ GRACEN1900的微博视频",
        "location_text": "河南省漯河市沙北街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "其他",
        "verified": "有效",
        "urgency": "",
        "lng": 114.031696,
        "lat": 33.589415,
        "src": "S3_weibo",
        "dedup_group": "b362d4db56",
        "label": "flooded_blocked",
        "label_confidence": 0.9,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.031696,
        "matched_lat": 33.589415,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0047",
        "timestamp": "2021-07-25 02:37:25",
        "raw_text": "河南暴雨互助 大家有需要的可以去这个酒店 这个博主给大家预定的@Vivekatt",
        "location_text": "河南省商丘市演集街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "有效",
        "urgency": "",
        "lng": 116.477883,
        "lat": 33.935726,
        "src": "S3_weibo",
        "dedup_group": "f11b5ccf62",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 116.477883,
        "matched_lat": 33.935726,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0048",
        "timestamp": "2021-07-25 02:40:03",
        "raw_text": "救援队队员失联‼️ 寻人‼️ #河南暴雨互助#",
        "location_text": "河南省郑州市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 113.75938400000001,
        "lat": 34.771713,
        "src": "S3_weibo",
        "dedup_group": "0462af467e",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.75938400000001,
        "matched_lat": 34.771713,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0049",
        "timestamp": "2021-07-24 19:29:18",
        "raw_text": "#焦作暴雨# 私信收到投稿‼️搜过无相同的帖河南省焦作市修武县烈杠营村       7月24日下午5点，烈杠营目前的情况需要堵住南边大坝的孔不然村里的水一直降不下来希望有志愿者、工具车前来帮忙谢谢🙏爱心对接：崔保平158****87程全社151****55投稿人@-啥都爱吃 楼里偷小孩儿的的微博视频",
        "location_text": "河南省焦作市五里源乡",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 113.447673,
        "lat": 35.27256,
        "src": "S3_weibo",
        "dedup_group": "243b021181",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.447673,
        "matched_lat": 35.27256,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0050",
        "timestamp": "2021-07-24 07:29:11",
        "raw_text": "河南暴雨互助不要点赞，只求转发，这是焦作市修武县五里源乡烈杠营村到现在为止，现在全村人都还无家可归，投亲靠友，村里的洪水也没有退去，为了保住修武县，舍小家为大家，修武人多多关注一下，支援一下这个焦作市受灾最严重的村庄[合十][合十][合十][合十]",
        "location_text": "河南省南阳市白河街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 112.600251,
        "lat": 32.958003000000005,
        "src": "S3_weibo",
        "dedup_group": "cbe8e8729d",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 112.600251,
        "matched_lat": 32.958003000000005,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0051",
        "timestamp": "2021-07-24 16:51:10",
        "raw_text": "河南暴雨互助#河南暴雨互助##河南暴雨救援# 【转发】【核实】【急缺物资】🆘🆘🆘新乡因为泄洪，有上千人紧急迁移，缺各种物资，很多大人小孩没有换的衣服，特别特别缺衣服！地点：新乡市（卫辉的，第一个泄洪地点）李元屯、上乐村镇、宋村！备用电话：152****50 王186****94 魏麻烦大家帮帮他们‼️",
        "location_text": "河南省新乡市胜利路街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.87836899999999,
        "lat": 35.313176,
        "src": "S3_weibo",
        "dedup_group": "92c6d43c6d",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.87836899999999,
        "matched_lat": 35.313176,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0052",
        "timestamp": "2021-07-24 23:18:14",
        "raw_text": "#河南暴雨救援中感人瞬间#河南暴雨互助#河南暴雨救援# 非常希望热度可以给新乡 卫辉 鹤壁所属的县城以及村庄一点点热度。郑州其实昨天已经没有太大问题了。大家已经步入正轨。这是刚拍的视频。我们郑州真的已经不需要物资了。要把这些物资送给真正有需要的人。尤其是村庄里面很多独居老人！ 郑州·鑫苑·逸品香山 Gratuit_Sy的微博视频",
        "location_text": "河南省郑州市建中街街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 113.65856299999999,
        "lat": 34.739486,
        "src": "S3_weibo",
        "dedup_group": "4e8f5aaff0",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.65856299999999,
        "matched_lat": 34.739486,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0053",
        "timestamp": "2021-07-25 03:16:46",
        "raw_text": "#河南暴雨互助#【用车堵住缺口！新乡堤坝出现决口，正用大货车填堵】7月24日，受强降雨影响，河南新乡牧野区一堤坝出现决口，堤坝两侧沦为河流。洪水从缺口涌向牧野、卫辉等地，因此上午地区水位居高不下。 打虎拍蝇的微博视频",
        "location_text": "河南省新乡市花园街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "其他",
        "verified": "有效",
        "urgency": "",
        "lng": 113.88211799999999,
        "lat": 35.322839,
        "src": "S3_weibo",
        "dedup_group": "c256ec3497",
        "label": "flooded_blocked",
        "label_confidence": 0.9,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.88211799999999,
        "matched_lat": 35.322839,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0055",
        "timestamp": "2021-07-24 12:53:11",
        "raw_text": "#河南暴雨互助# 新乡学院接受点接收了大量物资，有灾民安置和抗洪一线需要的请直接到新乡学院按流程领取，不用打电话，请携带身份证。",
        "location_text": "河南省新乡市洪门镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "帮助_物资",
        "verified": "有效",
        "urgency": "",
        "lng": 113.947998,
        "lat": 35.297174,
        "src": "S3_weibo",
        "dedup_group": "0bf09181bd",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.947998,
        "matched_lat": 35.297174,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0057",
        "timestamp": "2021-07-25 00:15:39",
        "raw_text": "河南暴雨互助河南暴雨互助志愿者招募明天早上9.30在郑州市中原西路郑州市疾控中心西隔壁的武警支队门口需要15名志愿者负责帮忙装运急救物资（这批物资将运往登封市），因紧缺人手，恳请有时间的志愿者帮助搬运。谢谢。联系人：登封市妇联李晓明：176****63。",
        "location_text": "河南省郑州市中原西路街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人",
        "verified": "有效",
        "urgency": "",
        "lng": 113.54141100000001,
        "lat": 34.75519,
        "src": "S3_weibo",
        "dedup_group": "bb8151ff29",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "中原西路",
        "matched_type": "road",
        "matched_lon": 113.55796595,
        "matched_lat": 34.748652150000005,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0058",
        "timestamp": "2021-07-25 02:56:22",
        "raw_text": "#河南暴雨互助# 地址是 河南省新乡市南环赵村‼️‼️一共有三百多只狗狗（坦克大院三百多只狗狗，月亮小院三十多只狗狗） 有这里救助基地急需帮忙 目前基地的墙塌了 狗狗们被阿姨放置在一个废弃修车厂里 现在月亮阿姨小院急需清单 疫苗 木质狗床 围栏 狗粮‼️‼️帮忙扩散‼️‼️",
        "location_text": "河南省新乡市洪门镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.920116,
        "lat": 35.292804,
        "src": "S3_weibo",
        "dedup_group": "9ba7c56e3a",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.920116,
        "matched_lat": 35.292804,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0059",
        "timestamp": "2021-07-25 03:06:58",
        "raw_text": "河南暴雨互助⚠️⚠️⚠️急需！！！卫辉市轴承厂高架桥，往实验中学走的河堤上，堤口出现裂口，没有沙土，没有工具，有工具和沙土的人士请前往支援！",
        "location_text": "河南省新乡市城郊乡",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 114.07761299999999,
        "lat": 35.411537,
        "src": "S3_weibo",
        "dedup_group": "f26e0be91b",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.07761299999999,
        "matched_lat": 35.411537,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0061",
        "timestamp": "2021-07-25 04:34:10",
        "raw_text": "#河南暴雨互助##新乡#新乡市妇幼保健院，积水严重，医护人员长期浸泡在水中工作，很多人脚都泡坏了，需要高筒雨靴！⚠️新乡市妇幼保健院⚠️急需沙袋⚠️急需高筒雨靴⚠️积水严重，医护人员长期浸泡在水中工作，很多人脚都泡坏了。请联系副院长赵瑞卿：156****66⚠️请求支援⚠️请求支援⚠️请求支援⚠️  新乡早知道的微博视频#新乡好网民#",
        "location_text": "河南省新乡市牧野镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.92607199999999,
        "lat": 35.329177,
        "src": "S3_weibo",
        "dedup_group": "ac6df96f59",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.92607199999999,
        "matched_lat": 35.329177,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0062",
        "timestamp": "2021-07-25 03:49:23",
        "raw_text": "#河南暴雨互助#新乡市的明天有谁从北站回市里吗，求捎带，我的车被泡了回不去了！",
        "location_text": "河南省新乡市留光镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 114.602433,
        "lat": 35.078065,
        "src": "S3_weibo",
        "dedup_group": "65ffb30dc8",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.602433,
        "matched_lat": 35.078065,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0063",
        "timestamp": "2021-07-25 01:12:01",
        "raw_text": "#河南暴雨互助# 为驰援河南，炮火联盟安徽大队22号上午在亳州集合完毕，共筹集矿泉水700相箱、方便面200箱、火腿肠20箱。七台皮卡尾箱和车内驾驶空间均已装满。 王永利的微博视频",
        "location_text": "河南省郑州市凤凰台街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "帮助_物资",
        "verified": "有效",
        "urgency": "",
        "lng": 113.72239499999999,
        "lat": 34.752959000000004,
        "src": "S3_weibo",
        "dedup_group": "451167a008",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.72239499999999,
        "matched_lat": 34.752959000000004,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0065",
        "timestamp": "2021-07-25 04:41:46",
        "raw_text": "#河南暴雨互助#鹤壁浚县淇门村：抗洪物资支援熙蕾核实：凌晨4：09现状：有多处绝口，四处是水域，村民4000—5000人，村民在安置点，采取自救。已报河南省救援应急总队。‼️【现缺少抗洪物资】‼️钢筋笼网（用于决口处），防汛沙袋，橡皮艇，救生衣，‼️鹤壁需要救援物资‼️外部联络人153****28这个是决堤缺物资 如果没有及时堵上就会闯祸，现在村里青壮年都去堵了，人手不够，暂时安全但是情况很紧急是需要物资的和加固河堤的物资，路线的话待具体沟通，因为到处是水，有可能需要空运",
        "location_text": "河南省鹤壁市黎阳街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 114.53438899999999,
        "lat": 35.674487,
        "src": "S3_weibo",
        "dedup_group": "eb7746a2a6",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.53438899999999,
        "matched_lat": 35.674487,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0066",
        "timestamp": "2021-07-25 04:59:34",
        "raw_text": "【已决堤！鹤壁浚县淇门村急需抗洪物资】【最新，转发少】救援小分队志愿者私信确认，已经多处绝口，四处是水域，急需救援物资支援。#河南暴雨救援# #河南暴雨互助# #鹤壁暴雨#",
        "location_text": "河南省鹤壁市九州路街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 114.30359399999999,
        "lat": 35.752357,
        "src": "S3_weibo",
        "dedup_group": "a471f20112",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.30359399999999,
        "matched_lat": 35.752357,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0067",
        "timestamp": "2021-07-25 05:12:43",
        "raw_text": "#新乡#河南暴雨互助 新乡平原体育中心，大批外地援助物资抵达，需要大量志愿者协助搬运，时间紧任务重，能来的快来 新乡",
        "location_text": "河南省郑州市矿山街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人",
        "verified": "有效",
        "urgency": "",
        "lng": 113.17545600000001,
        "lat": 34.709429,
        "src": "S3_weibo",
        "dedup_group": "1990e5f7f4",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.17545600000001,
        "matched_lat": 34.709429,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0068",
        "timestamp": "2021-07-25 06:54:28",
        "raw_text": "河南暴雨互助 这个群整集整理失联人员信息，目前还缺帮手。 网页链接",
        "location_text": "河南省郑州市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人",
        "verified": "有效",
        "urgency": "",
        "lng": 113.75938400000001,
        "lat": 34.771713,
        "src": "S3_weibo",
        "dedup_group": "e179aab69f",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.75938400000001,
        "matched_lat": 34.771713,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0069",
        "timestamp": "2021-07-25 07:01:00",
        "raw_text": "河南暴雨互助各位新乡卫辉狮豹头乡罗圈村的消息吗，我的大学同学从前天就突然联系不上了，希望有消息的朋友能告知一下。",
        "location_text": "河南省郑州市新华路街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 113.404274,
        "lat": 34.523503999999996,
        "src": "S3_weibo",
        "dedup_group": "f15da5f3d0",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.404274,
        "matched_lat": 34.523503999999996,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0070",
        "timestamp": "2021-07-25 07:07:18",
        "raw_text": "河南暴雨互助@追梦的阿帆: 有四万袋子，在淇县，就是没有人装没有车拉淇县西岗小车村西，133****99打算运往浚县，到25号7点未运输,需要装卸人员和车!!!",
        "location_text": "河南省许昌市南关街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人",
        "verified": "有效",
        "urgency": "",
        "lng": 113.83670500000001,
        "lat": 34.019428000000005,
        "src": "S3_weibo",
        "dedup_group": "4143c786d8",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "南关街",
        "matched_type": "road",
        "matched_lon": 113.66981695,
        "matched_lat": 34.743241475,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0072",
        "timestamp": "2021-07-25 07:33:57",
        "raw_text": "河南暴雨互助河南暴雨互助各位新乡卫辉狮豹头乡罗圈村的消息吗，我的大学同学从前天就突然联系不上了，希望有消息的朋友能告知一下。 联系电话158****23从21号就联系不上了。",
        "location_text": "河南省郑州市新华路街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 113.404274,
        "lat": 34.523503999999996,
        "src": "S3_weibo",
        "dedup_group": "24ff5102b9",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.404274,
        "matched_lat": 34.523503999999996,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0073",
        "timestamp": "2021-07-24 09:50:09",
        "raw_text": "【#妻子回应丈夫开铲车救63名硕博生#：嫁了个男子汉，当时也很担心他】据@一手Video 消息：河南巩义，米河镇突发山洪，63名硕博生被困大巴车内，刘松峰开铲车冲进洪水救下他们。妻子马曙燕称，当时一家四口正在附近工厂躲雨，听说有人被困，他便义无反顾去救人，自己也很担心他，但不能见死不救。一手Video的微博视频另点击了解：#被郑州阿姨收养长大男子暴雨中救15人##河南暴雨互助#",
        "location_text": "河南省郑州市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "其他",
        "verified": "有效",
        "urgency": "",
        "lng": 113.75938400000001,
        "lat": 34.771713,
        "src": "S3_weibo",
        "dedup_group": "5c685360d5",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.75938400000001,
        "matched_lat": 34.771713,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "wb_0074",
        "timestamp": "2021-07-25 07:43:04",
        "raw_text": "#河南暴雨互助#  #新乡暴雨#   #卫辉暴雨#   坐标:卫辉市城郊乡北马头村被困情况:目前已经停电超过24小时，村干部一直说没事，但是村里中后部位置很低，特别是新区的地方，家里已经进水，大家现在都出不去，水位一直还在慢涨，卫河水位是在降低，但是村里面的水被其他河流倒灌，出村（北关的大路）的水位已经到成年人肩膀位置。联系电话188****09     151****44",
        "location_text": "河南省新乡市柳庄乡",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 114.074951,
        "lat": 35.401447999999995,
        "src": "S3_weibo",
        "dedup_group": "822fbf31a9",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.074951,
        "matched_lat": 35.401447999999995,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0076",
        "timestamp": "2021-07-25 07:55:08",
        "raw_text": "#河南暴雨互助##新乡暴雨##河南暴雨# 帮扩🙏🙏🙏新乡市卫辉七中家属楼 ，需要救援队，需要救援队。",
        "location_text": "河南省新乡市城郊乡",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 114.092431,
        "lat": 35.420553000000005,
        "src": "S3_weibo",
        "dedup_group": "c9ce281c26",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.092431,
        "matched_lat": 35.420553000000005,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0077",
        "timestamp": "2021-07-25 08:09:56",
        "raw_text": "河南暴雨互助告急急急急！送往一线的物资大量紧缺，吃的喝的用的，救生衣，吸水泵，照明灯，消杀物资和药品，袜子裤头背心等有物资的往航海路60号海为酒店，越快越好158****63杨孝忠",
        "location_text": "河南省郑州市嵩山路街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 112.60403400000001,
        "lat": 33.045177,
        "src": "S3_weibo",
        "dedup_group": "9dba48d6d6",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "嵩山路",
        "matched_type": "road",
        "matched_lon": 112.60403400000001,
        "matched_lat": 33.045177,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0078",
        "timestamp": "2021-07-25 07:57:54",
        "raw_text": "河南暴雨互助河南暴雨互助#扶沟泄洪# 请各界爱心人士多关注一下泄洪区周口市扶沟县‼️目前已经有几个村庄被淹了‼️几万官民连续奋战好几天了‼️需要救援‼️需要物资补给‼️请各界爱心人士多关注一下吧‼️这个小县城真的需要救援‼️这些都是已经得到证实的‼️已经撤离了好几个村庄了‼️请各界人士多关注一下周口市扶沟县吧‼️🙏",
        "location_text": "河南省周口市城关镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 114.40150600000001,
        "lat": 34.065906,
        "src": "S3_weibo",
        "dedup_group": "3602da1274",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.40150600000001,
        "matched_lat": 34.065906,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0079",
        "timestamp": "2021-07-23 22:25:35",
        "raw_text": "【投稿】#河南暴雨互助# 物资求助卫辉市政府副市长孙建188****70现在非常紧缺的是如下简易方便食品，请大家紧急扩散。 水: 2万件方便面: 2 万件，面包: 2万件 火腿肠: 2万件，饼 干: 2万件。救灾物资:头灯、强光手 电: 1万个。雨衣、 雨靴: 1万个。夏凉 被:万，凉席: 1万 张，充电宝: 500 个。有这些物资的，可以同新市卫辉市孙建明副市长联系",
        "location_text": "河南省新乡市汲水镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 114.073525,
        "lat": 35.417259,
        "src": "S3_weibo",
        "dedup_group": "9ed522bd4c",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.073525,
        "matched_lat": 35.417259,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0081",
        "timestamp": "2021-07-23 23:42:14",
        "raw_text": "河南暴雨互助中原阳光国际酒店来了几车物资现需要志愿者，求扩散已核实187****34#卫辉暴雨# 卫辉市",
        "location_text": "河南省新乡市",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人",
        "verified": "有效",
        "urgency": "",
        "lng": 114.071601,
        "lat": 35.404069,
        "src": "S3_weibo",
        "dedup_group": "d24cd2572e",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.071601,
        "matched_lat": 35.404069,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0082",
        "timestamp": "2021-07-23 23:26:35",
        "raw_text": "#河南暴雨互助##河南暴雨救援#河南暴雨互助请帮我转发！江苏有无物资支援河南明天车队有对接，哪个地方都可以",
        "location_text": "河南省平顶山市昆阳街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 113.361148,
        "lat": 33.627553000000006,
        "src": "S3_weibo",
        "dedup_group": "233f5108c8",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.361148,
        "matched_lat": 33.627553000000006,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0083",
        "timestamp": "2021-07-25 08:01:09",
        "raw_text": "河南暴雨互助坐标:卫辉市城郊乡北马头村被困情况:目前已经停电超过24小时，村干部一直说没事，但是村里中后部位置很低，特别是新区的地方，家里已经进水，大家现在都出不去，水位一直还在慢涨，卫河水位是在降低，但是村里面的水被其他河流倒灌，出村（北关的大路）的水位已经到成年人肩膀位置。",
        "location_text": "河南省新乡市城郊乡",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救",
        "verified": "有效",
        "urgency": "",
        "lng": 114.067655,
        "lat": 35.41724,
        "src": "S3_weibo",
        "dedup_group": "e8b0c533a0",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.067655,
        "matched_lat": 35.41724,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0084",
        "timestamp": "2021-07-25 08:15:46",
        "raw_text": "河南暴雨互助河南暴雨互助河南暴雨互助⚠️  大家好，我是线上志愿者，负责收集求救信息以及物资供应信息‼️大家可以向我投稿‼️投稿格式：地址：姓名：联系电话：求救人数：目前情况：我们会有志愿者审核并联系求助人 并尽力帮你们寻找物资并进行物资对接或者救援队 ❗️❗️ 有需要帮助的可以艾特我或者私信我❗️❗️! 如有想加入线上志愿者青私信我，一起为河南助力!河南会好的!",
        "location_text": "河南省鹤壁市九州路街道",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "其他",
        "verified": "有效",
        "urgency": "",
        "lng": 114.279118,
        "lat": 35.753226,
        "src": "S3_weibo",
        "dedup_group": "359bddab4c",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.279118,
        "matched_lat": 35.753226,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "wb_0085",
        "timestamp": "2021-07-25 07:26:47",
        "raw_text": "德云社尚九熙何九华河南暴雨互助#周口泄洪#  【扶沟县🆘西华县🆘小县城缺物资人力】大家看下我们小破扶沟吧！扶沟县位于贾鲁河流域周口市上游，小县城人民舍小家顾大家，农村地区大堤堤坝不少地方都开口了全县人口紧急迁移！现在紧缺人力！物资！！！🆘【扶沟】联系人：娄主任（红十字协会）139****13（已更新更换联系人的电话）【西华】联系人：金国明 139****68 合肥·肥东县",
        "location_text": "河南省周口市崔桥镇",
        "platform": "weibo_crawl",
        "source_class": "unlabeled",
        "orig_category": "求救_招人_招物",
        "verified": "有效",
        "urgency": "",
        "lng": 114.56088799999999,
        "lat": "",
        "src": "S3_weibo",
        "dedup_group": "5d45cb9975",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0000",
        "timestamp": "",
        "raw_text": "能提供避雨场所和简单食物",
        "location_text": "郑东新区商务外环路七号，立基上东国际附近",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.72488573971913,
        "lat": 34.77800963224018,
        "src": "S3_manual",
        "dedup_group": "4f56ceb149",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "商务外环路",
        "matched_type": "road",
        "matched_lon": 113.71860088571428,
        "matched_lat": 34.7774842,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "mn_0001",
        "timestamp": "",
        "raw_text": "可以提供支持： 食物 能提供避雨场所和简单食物",
        "location_text": "郑东新区商务外环路七号立基上东国际附近",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_物资",
        "verified": "",
        "urgency": "",
        "lng": 113.72488573971913,
        "lat": 34.77800963224018,
        "src": "S3_manual",
        "dedup_group": "dbfd08f0f9",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "商务外环路",
        "matched_type": "road",
        "matched_lon": 113.71860088571428,
        "matched_lat": 34.7774842,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "mn_0002",
        "timestamp": "",
        "raw_text": "可以提供支持： 住宿 提供免费加床，简单早餐",
        "location_text": "英协路民航路，艾特时尚酒店",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_manual",
        "dedup_group": "029312fe20",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "英协路",
        "matched_type": "road",
        "matched_lon": 113.71224592857142,
        "matched_lat": 34.751482942857145,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "mn_0003",
        "timestamp": "",
        "raw_text": "提供热水，避雨和休息的地方，24小时不关门",
        "location_text": "姚砦站郑州地铁5号线C出口， 23℃街区",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_manual",
        "dedup_group": "a0cb8aa88d",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "姚砦",
        "matched_type": "station_line5",
        "matched_lon": 113.7024772,
        "matched_lat": 34.7753761,
        "geo_confidence": "A",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "mn_0004",
        "timestamp": "",
        "raw_text": "避难所，有水，有电能做饭",
        "location_text": "杨金路嘉阳科技广场三号楼五楼",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_物资",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_manual",
        "dedup_group": "5662d19cde",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0005",
        "timestamp": "",
        "raw_text": "免费提供粥，包子等",
        "location_text": "西湖花园北区翌宸好粥道店",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_物资",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_manual",
        "dedup_group": "3989136ec1",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0006",
        "timestamp": "",
        "raw_text": "有电有水食物",
        "location_text": "西大街138号 银座国际5楼， 二七广场附近西大街",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_物资",
        "verified": "",
        "urgency": "",
        "lng": 113.67989824045723,
        "lat": 34.75659864618233,
        "src": "S3_manual",
        "dedup_group": "00df0fecd1",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "西大街",
        "matched_type": "road",
        "matched_lon": 113.66510093333332,
        "matched_lat": 34.7525212,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "mn_0007",
        "timestamp": "",
        "raw_text": "可提供支持：提供个人酒店80间房或者我出费用安排救援队住宿洗漱整顿",
        "location_text": "新郑市龙湖镇",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.6925773735778,
        "lat": 34.6149497585131,
        "src": "S3_manual",
        "dedup_group": "05f598adca",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.6925773735778,
        "matched_lat": 34.6149497585131,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "mn_0008",
        "timestamp": "",
        "raw_text": "可以提供支持： 住宿 有基础设施 可接送",
        "location_text": "新郑东电花苑，新烟街，新华路",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.75180885415868,
        "lat": 34.38896108223296,
        "src": "S3_manual",
        "dedup_group": "ae0255b17e",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.75180885415868,
        "matched_lat": 34.38896108223296,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0009",
        "timestamp": "",
        "raw_text": "丹尼斯百货花丹店东方嘉禾影城可以容纳1200人",
        "location_text": "丹尼斯百货花丹店东方嘉禾影城可以容纳1200人",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.49947124318383,
        "lat": 34.684592562364294,
        "src": "S3_manual",
        "dedup_group": "4385db3195",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.49947124318383,
        "matched_lat": 34.684592562364294,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "mn_0010",
        "timestamp": "",
        "raw_text": "提供简单食物",
        "location_text": "新乡‬宝龙‮场广‬和万‮广达‬场：娅咪娅烘焙",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_物资",
        "verified": "",
        "urgency": "",
        "lng": 113.93127035266996,
        "lat": 35.30321998421279,
        "src": "S3_manual",
        "dedup_group": "04240b3bfb",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.93127035266996,
        "matched_lat": 35.30321998421279,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0011",
        "timestamp": "",
        "raw_text": "可提供床位3000余张，有水电，供应一日三餐。需要的广大群众请携带身份证或户口本前来",
        "location_text": "新乡县古固寨镇新延路北侧辅豫实验高级中学",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 114.01429291569929,
        "lat": 35.24936526553776,
        "src": "S3_manual",
        "dedup_group": "00fdb93078",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.01429291569929,
        "matched_lat": 35.24936526553776,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0012",
        "timestamp": "",
        "raw_text": "为来新救援志愿服务团队提供临时休息的场所，有热水供应，可以充电",
        "location_text": "新乡市卫滨区八一路中段七中路6号",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.85371604477152,
        "lat": 35.31750194999446,
        "src": "S3_manual",
        "dedup_group": "2e19d522e1",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.85371604477152,
        "matched_lat": 35.31750194999446,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0013",
        "timestamp": "",
        "raw_text": "可以提供支持：为广大市民免费准备了暖心餐，热水，休息床铺。",
        "location_text": "新乡市体育中心-浩博体育全民健身馆",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.89794761994678,
        "lat": 35.30489683869737,
        "src": "S3_manual",
        "dedup_group": "dfb071c3f9",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.89794761994678,
        "matched_lat": 35.30489683869737,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0014",
        "timestamp": "",
        "raw_text": "如果您及您的家人朋友在世家酒店附近受阻，我们开放了会议室和大厅，如有需求，直接前来即可，一楼有专人接待。雨大风急，安全第一。\n在附近无处躲雨或休息本店大厅提供热水、 沙发茶几 、一次性杯子、酒精消毒、一次性口罩等物资，同时提供网络、充电口等…",
        "location_text": "新乡市世家风尚酒店",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.9077956534221,
        "lat": 35.30919869009645,
        "src": "S3_manual",
        "dedup_group": "d60d4d7336",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.9077956534221,
        "matched_lat": 35.30919869009645,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0015",
        "timestamp": "",
        "raw_text": "为来新乡救援的团队提供临时休息的场所，可休息，有热水，可充电，可容纳100人",
        "location_text": "新乡市牧野区万达广场东100米学为教育",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.9151198077366,
        "lat": 35.3233796075363,
        "src": "S3_manual",
        "dedup_group": "5aed638a54",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.9151198077366,
        "matched_lat": 35.3233796075363,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0016",
        "timestamp": "",
        "raw_text": "提供住宿、用餐。",
        "location_text": "新乡市金穗大道东段龙士达温泉酒店，百度地图直接导航",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.94504137613791,
        "lat": 35.30216760571579,
        "src": "S3_manual",
        "dedup_group": 7.3491505e+16,
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.94504137613791,
        "matched_lat": 35.30216760571579,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0017",
        "timestamp": "",
        "raw_text": "7月24日已为救援组织提供17间房，目前还可接待4间房，有电有水有网络",
        "location_text": "新乡市景荣酒店",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.93360046733228,
        "lat": 35.3096399303368,
        "src": "S3_manual",
        "dedup_group": "06924a819e",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.93360046733228,
        "matched_lat": 35.3096399303368,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0018",
        "timestamp": "",
        "raw_text": "为来新乡的志愿者服务团队提供临时休息场所，可供应热水，可以充电",
        "location_text": "新乡市解放大道355号",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.87018744810018,
        "lat": 35.30016499553083,
        "src": "S3_manual",
        "dedup_group": "7097dc5ebf",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.87018744810018,
        "matched_lat": 35.30016499553083,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0020",
        "timestamp": "",
        "raw_text": "可以提供支持：可容纳200人 有水有电，有独立卧室卫生间，床铺200张",
        "location_text": "新乡市辉县薄壁镇东沈庄丰裕山庄",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.50273101421844,
        "lat": 35.45047090161266,
        "src": "S3_manual",
        "dedup_group": "b1a5b6a8d3",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.50273101421844,
        "matched_lat": 35.45047090161266,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0021",
        "timestamp": "",
        "raw_text": "可提供支持：志愿者提供住宿，有水电，可以安排一百人左右",
        "location_text": "新乡市红旗区文化路61号",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.88037775230765,
        "lat": 35.29809273071947,
        "src": "S3_manual",
        "dedup_group": "3b6389d551",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "文化路",
        "matched_type": "road",
        "matched_lon": 113.66039926,
        "matched_lat": 34.77769136,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "mn_0022",
        "timestamp": "",
        "raw_text": "可提供支持：沙发、有水有电，可供临时休息",
        "location_text": "新乡市红旗区胜利路76号",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.97602826137634,
        "lat": 35.06259487560675,
        "src": "S3_manual",
        "dedup_group": "62264f127f",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.97602826137634,
        "matched_lat": 35.06259487560675,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0023",
        "timestamp": "",
        "raw_text": "新乡市红旗区人民路与牧野大 道交叉口向南30米路东－拓为教育科技",
        "location_text": "新乡市红旗区人民路与牧野大 道交叉口向南30米路东－拓为教育科技",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.88211830906378,
        "lat": 35.32283890078049,
        "src": "S3_manual",
        "dedup_group": "743fdca1fb",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "人民路",
        "matched_type": "road",
        "matched_lon": 113.66700185,
        "matched_lat": 34.75829485,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "mn_0024",
        "timestamp": "",
        "raw_text": "23日起提供热水供应及救援队休息场所（缺物资）",
        "location_text": "新乡市阿克曼皮肤病医院和新乡兆岐医院（和平大道与前进路交叉口向东50米）",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 114.71230396476186,
        "lat": 34.998019603898165,
        "src": "S3_manual",
        "dedup_group": "b39abd5bed",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.71230396476186,
        "matched_lat": 34.998019603898165,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0025",
        "timestamp": "",
        "raw_text": "为来新乡救援的团队提供临时休息的场所，可休息，有热水，可充电，可容纳100人。已做好消杀准备",
        "location_text": "新乡市 卫滨区胜利路新都汇向南一百米路西学为教育",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.87737507631,
        "lat": 35.30327801559934,
        "src": "S3_manual",
        "dedup_group": "aedf43b64a",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.87737507631,
        "matched_lat": 35.30327801559934,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0026",
        "timestamp": "",
        "raw_text": "新乡牧野区万达影城为附近的回不到家朋友开放影厅提供休息 有需要的朋友可以去 ​",
        "location_text": "新乡牧野区万达影城为附近的回不到家朋友开放影厅提供休息 有需要的朋友可以去 ​",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_物资",
        "verified": "",
        "urgency": "",
        "lng": 113.91232742505885,
        "lat": 35.32317890444682,
        "src": "S3_manual",
        "dedup_group": "63f5d93944",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.91232742505885,
        "matched_lat": 35.32317890444682,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0027",
        "timestamp": "",
        "raw_text": "可提供：饮用水，泡面，自来水，少量毯子",
        "location_text": "新乡宝龙天地2号门3楼July Home母婴水育生活馆",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_物资",
        "verified": "",
        "urgency": "",
        "lng": 113.93003599106869,
        "lat": 35.300961882599,
        "src": "S3_manual",
        "dedup_group": "34949b4a57",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.93003599106869,
        "matched_lat": 35.300961882599,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0028",
        "timestamp": "",
        "raw_text": "提供休息场所、免费热水和毛毯",
        "location_text": "新乡宝龙广场三楼唐阁影院影城",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.81159378076424,
        "lat": 35.19656440899276,
        "src": "S3_manual",
        "dedup_group": "ccf9178ce7",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.81159378076424,
        "matched_lat": 35.19656440899276,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0029",
        "timestamp": "",
        "raw_text": "提供休息场所并提供免费热水和毛毯",
        "location_text": "新乡宝龙广场 宝龙三楼唐阁DMG影院影城",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.81159378076424,
        "lat": 35.19656440899276,
        "src": "S3_manual",
        "dedup_group": "f083249a80",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.81159378076424,
        "matched_lat": 35.19656440899276,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0030",
        "timestamp": "",
        "raw_text": "可以提供支持： 住宿 饮用水，和热水，通电可以打地铺",
        "location_text": "新芒果大厦12楼1204室河南米度装饰工程有限公司，在CBD附近郑州之林公园附近",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": 113.72503108555065,
        "lat": 34.77989018987319,
        "src": "S3_manual",
        "dedup_group": "59e650f5dd",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.72503108555065,
        "matched_lat": 34.77989018987319,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "mn_0031",
        "timestamp": "",
        "raw_text": "今晚免费安排住宿",
        "location_text": "新乡市淘宝城十字路口附近",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_manual",
        "dedup_group": "fd47b086bc",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0032",
        "timestamp": "",
        "raw_text": "提供休息场所并提供免费热水和毛毯，在宝龙广场附近因暴雨被困无法回家可以去这里。不用打电话，停电了，直接上三楼。",
        "location_text": "新乡宝龙三楼唐阁DMG影院影城",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_manual",
        "dedup_group": "4ce760949c",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0033",
        "timestamp": "",
        "raw_text": "一楼三楼的大厅可以容纳千余人，解决基本的温饱问题 24小时安排的有人值守",
        "location_text": "卫辉市中原阳光国际酒店",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_住所",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_manual",
        "dedup_group": "963717c079",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0034",
        "timestamp": "",
        "raw_text": "在卫辉参加救援的车辆、船只，需要加油的请去卫辉南关十字，大桥石化免费为您提供，请相互转发！感恩无处不在，给救援队送油，汽油和二程机油都有。目前所在位置建业春天里售楼部。在卫辉救援的救援队，没油的打电话，免费送油。谁有救援队的群的话转发一下吧",
        "location_text": "卫辉南关十字，大桥石化",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "帮助_物资",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_manual",
        "dedup_group": "234a11e5b5",
        "label": "offer_help",
        "label_confidence": 0.7,
        "label_reason": "orig_category",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0035",
        "timestamp": "",
        "raw_text": "现在向社会各界爱心人士求助生活物质和药品，全村被洪水淹没，一千七百位村民现在受到重灾。希望大家帮助我们度过难关，救我们一命！望大家积极转发大家帮忙转发。急需急需！急需大量物资。联系电话180****40。",
        "location_text": "河南省新乡市卫辉市顿坊店乡水屯村支部",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "",
        "urgency": "",
        "lng": 114.12774072702936,
        "lat": 35.49573946545735,
        "src": "S3_manual",
        "dedup_group": "41dcd11f67",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.12774072702936,
        "matched_lat": 35.49573946545735,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0036",
        "timestamp": "",
        "raw_text": "河南省新乡市新乡医学院体育馆接收了2000名受灾群众，现急需各种钢丝床、折叠床及配套的床垫等物资，学校可采购并接受捐赠，麻烦有渠道可以联系一下我们谢谢。",
        "location_text": "河南省新乡市新乡医学院体育馆",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "",
        "urgency": "",
        "lng": 113.942066996764,
        "lat": 35.2933387182719,
        "src": "S3_manual",
        "dedup_group": "23d177a599",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.942066996764,
        "matched_lat": 35.2933387182719,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0037",
        "timestamp": "",
        "raw_text": "新乡市红旗区胜利路维克精品酒店自发安置卫辉市人员原有160人，年轻人多已去了集体安置点，现有60余人，多是行动不便的老人、妈妈和孩子，现在酒店没水没电，中午找到了30多份盒饭，还余30多份没有解决，水也喝完了，急需新乡当地及支持，其他卫生用品和母婴用品也有需要。",
        "location_text": "新乡市红旗区胜利路维克精品酒店",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "",
        "urgency": "",
        "lng": 113.878413068327,
        "lat": 35.3069940725572,
        "src": "S3_manual",
        "dedup_group": "c51210e1e8",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.878413068327,
        "matched_lat": 35.3069940725572,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0038",
        "timestamp": "",
        "raw_text": "村庄的千余亩良田绝收，养殖业和种植的大棚全部被毁，所有的家庭进水都在一二米，全部家庭一搂的家电家俱全部完蛋，几百辆车至今还泡在水里，十几个超市全部被淹完，截至29号清早，村内积水深的地方还有一米多，北环路和创业路，新七街的水还在源源不断的向村内流，已经发黑且严重发臭，全体干部和年青群众和抗洪志愿者仍坚守一线，大部分人员由于长期在水里侵泡导致皮肤过敏，溃烂，请求爱心人士转发一下，以引起有关部门重视，协助我们临清店村联系专业排涝机构，为我们提供专业的大型排涝设备，帮助我们尽快排涝，让临清店村的父老乡亲尽早回到临清店村，积极进行自救，重建家园！临清店村的父老乡村含泪以盼。中国加油！河南加油！新乡加油！临清店加油！",
        "location_text": "河南省新乡市牧野区107与北环交叉口的临清店村",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "",
        "urgency": "",
        "lng": 113.964058773276,
        "lat": 35.3516290350683,
        "src": "S3_manual",
        "dedup_group": "6904e30e1a",
        "label": "flooded_blocked",
        "label_confidence": 0.9,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.964058773276,
        "matched_lat": 35.3516290350683,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0039",
        "timestamp": "",
        "raw_text": "队伍名称：筠连县筠爱青年应急救援队 当前位置：目前驻地新乡，正前往浚县救援 人员数量：30 物资求助:一次性防护服每天需要30套",
        "location_text": "鹤壁浚县",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "",
        "urgency": "",
        "lng": 114.557607850855,
        "lat": 35.6819173059128,
        "src": "S3_manual",
        "dedup_group": "f22e7c0bea",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.557607850855,
        "matched_lat": 35.6819173059128,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0040",
        "timestamp": "",
        "raw_text": "鹤壁浚县姬庄村一线洪区，断水断电，缺乏政府援助，由于关注度不够甚至缺乏民间援助，所有抗洪措施都是村干部自发组织，生活物资中缺乏食品，药品，帐篷，垫子，被子，发电机，抗洪物资中缺乏，沙子，石头，挖掘机，仅在200m之隔的隔壁村，由于有政府救援队的进驻，什么物资都不缺，生活物资抗洪物资人力都足够，请帮忙扩散帮帮这里，武物资直接送往一线，可以开具村支书盖章证明，发布时间7月29日13点10分",
        "location_text": "鹤壁浚县姬庄村",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "",
        "urgency": "",
        "lng": 114.507402993191,
        "lat": 35.795513908052,
        "src": "S3_manual",
        "dedup_group": "92aaeb9bbb",
        "label": "infra_damage",
        "label_confidence": 0.8,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.507402993191,
        "matched_lat": 35.795513908052,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0041",
        "timestamp": "",
        "raw_text": "因开展救援多日，需要迷彩作战靴和雨靴各20双。",
        "location_text": "新乡卫辉市，比干大道南头",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "",
        "urgency": "",
        "lng": 114.084940152532,
        "lat": 35.4514293724233,
        "src": "S3_manual",
        "dedup_group": "e4fc1c7671",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.084940152532,
        "matched_lat": 35.4514293724233,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0042",
        "timestamp": "",
        "raw_text": "河南师大附中实验学校昨夜接收2000多名卫辉受灾群众，急需生活用品、水、食物（米、面、油）等。",
        "location_text": "新乡市新飞大道与心连心大道交叉口西800米路南（新校区）",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "",
        "urgency": "",
        "lng": 113.867306329171,
        "lat": 35.2182213621475,
        "src": "S3_manual",
        "dedup_group": "f1bd8b4c43",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 113.867306329171,
        "matched_lat": 35.2182213621475,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0043",
        "timestamp": "",
        "raw_text": "300多村民住在堤坝上 救生衣300个 救生船20个 雨衣250个 雨靴100双 帐篷10顶 铁掀 200把 手中简 100个 发电机5台 抽水泵5台 急需援助 急需援助",
        "location_text": "浚县小河镇柴湾村",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "求救_招物",
        "verified": "",
        "urgency": "",
        "lng": 114.538433160422,
        "lat": 35.6157011391753,
        "src": "S3_manual",
        "dedup_group": "b8d9094291",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.538433160422,
        "matched_lat": 35.6157011391753,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "mn_0045",
        "timestamp": "",
        "raw_text": "【已核实：0731 00:05】浚县四环西陈村北边人工堤，快要决堤了，急需装沙袋人员，这个地方如果决口，卫河西一大片就不确保安全了，请求支援！请求支援！",
        "location_text": "浚县四环西陈村北边人工堤",
        "platform": "qq_sheet",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": 114.538433160422,
        "lat": 35.6157011391753,
        "src": "S3_manual",
        "dedup_group": "98875bcd69",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": 114.538433160422,
        "matched_lat": 35.6157011391753,
        "geo_confidence": "A",
        "geo_via": "native_coord",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0001",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "农业路高架河南省职工医院旁边的全季酒店 微博id：[已脱敏] | 求救人：131****22",
        "location_text": "农业路高架河南省职工医院旁边的全季酒店",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "微博",
        "verified": "已核实",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "6ccd98e904",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "农业路高架",
        "matched_type": "road",
        "matched_lon": 113.6387738125,
        "matched_lat": 34.7832135875,
        "geo_confidence": "A",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0002",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州大学口腔医学院 微博id：[已脱敏]",
        "location_text": "郑州大学口腔医学院",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "微博",
        "verified": "已核实",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "2faf446fa6",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0003",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州5号线隧道海滩口录路 微博id：[已脱敏]",
        "location_text": "郑州5号线隧道海滩口录路",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "微博",
        "verified": "",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "fbbd863e8f",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0004",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "金水区北三环辅路与金明路交叉口西南角，平安果连锁酒店旁 车辆特征：白色雷克萨斯  油箱没有油 发动机故障 | 车牌号：豫A00Qc0 | 联系电话：150****22，139****90",
        "location_text": "金水区北三环辅路与金明路交叉口西南角，平安果连锁酒店旁",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "电话以联系，目前没有救援人员联系",
        "verified": "已核实",
        "urgency": "中",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "5cba9359fb",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "北三环",
        "matched_type": "road",
        "matched_lon": 113.64306568,
        "matched_lat": 34.81012283,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0005",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州百荣世贸商城A座 二七区京广快速路与芦庄路西南方向",
        "location_text": "郑州百荣世贸商城A座",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "已核实",
        "urgency": "中",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "8ba6619e63",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0006",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "南阳路农业路附近",
        "location_text": "南阳路农业路附近",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "ccb72d054a",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "南阳路",
        "matched_type": "road",
        "matched_lon": 113.62471585555556,
        "matched_lat": 34.80327634444445,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0007",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "明理路与莲湖东路888路公交车",
        "location_text": "明理路与莲湖东路888路公交车",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "b7ac9034a6",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0009",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "巩义米河明月小区 巩义市新米路东200米 明月新村 微博id：[已脱敏]",
        "location_text": "巩义米河明月小区",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "微博",
        "verified": "已核实",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "3e3b8b2a49",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0010",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "荥阳市汜水镇老君堂村",
        "location_text": "荥阳市汜水镇老君堂村",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "紧急",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "2e4b327c14",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0011",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "河南省巩义市小关镇口头村鑫乐苑小区以及谷山17组",
        "location_text": "河南省巩义市小关镇口头村鑫乐苑小区以及谷山17组",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "c469303893",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0012",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "惠济区苏屯幼儿园校车",
        "location_text": "惠济区苏屯幼儿园校车",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "已核实",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "e34198cf89",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0013",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "K599列车",
        "location_text": "K599列车",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "2b61ca24b1",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0014",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州市中医院分院 need hel",
        "location_text": "郑州市中医院分院",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "3c17a6c126",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0015",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "河南省郑州市金水区东风渠大桥下 187****50",
        "location_text": "河南省郑州市金水区东风渠大桥下",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "中",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "7277371a87",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0016",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "西四环莲花街交叉口 271公交车",
        "location_text": "西四环莲花街交叉口 271公交车",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "高",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "92f17a56b7",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "西四环",
        "matched_type": "road",
        "matched_lon": 113.580375525,
        "matched_lat": 34.69039729166666,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0017",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "河南省郑州市新密市超化镇超化村一组 提示",
        "location_text": "河南省郑州市新密市超化镇超化村一组",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "高",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "ed1b598b53",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0018",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州高新区西三环延长线桥",
        "location_text": "郑州高新区西三环延长线桥",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "高",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "026b39b755",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "西三环",
        "matched_type": "road",
        "matched_lon": 113.58905017878789,
        "matched_lat": 34.78102712424243,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0019",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "一号线会展中心站旁的车库 156****93 ​",
        "location_text": "一号线会展中心站旁的车库",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "中",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "3a3deed8b0",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0020",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "连霍高速与西四环交叉口 通和高速公路养护有限公司 180****06",
        "location_text": "连霍高速与西四环交叉口 通和高速公路养护有限公司",
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        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "暂未核实",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "b7e9f4ba7d",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "西四环",
        "matched_type": "road",
        "matched_lon": 113.580375525,
        "matched_lat": 34.69039729166666,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0021",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "京广快速路与陇海快速路高架入口 微博ID：[已脱敏]",
        "location_text": "京广快速路与陇海快速路高架入口",
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        "orig_category": "",
        "verified": "",
        "urgency": "",
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        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "691a2e56d4",
        "label": "trapped_help",
        "label_confidence": 0.7,
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        "matched_name": "陇海快速路",
        "matched_type": "road",
        "matched_lon": 113.6278831722222,
        "matched_lat": 34.73776536111112,
        "geo_confidence": "A",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0022",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "地铁5号线，海滩寺到沙口路中间，往沙口路反向 166****37",
        "location_text": "地铁5号线，海滩寺到沙口路中间，往沙口路反向",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "微信",
        "verified": "",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "1d96815b65",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "海滩寺",
        "matched_type": "station_line5",
        "matched_lon": 113.6446477,
        "matched_lat": 34.7754542,
        "geo_confidence": "A",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0023",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "连湖东路与明理路交叉口公交车 135****97",
        "location_text": "连湖东路与明理路交叉口公交车",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "5820b414eb",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0024",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "桐柏路汝河路郑州市中医院",
        "location_text": "桐柏路汝河路郑州市中医院",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "中",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "3f458766ca",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "汝河路",
        "matched_type": "road",
        "matched_lon": 113.61554316666668,
        "matched_lat": 34.73376566666667,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0025",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "荥阳 穆沟段k31列车 微博  byebyealcohol(非本人)",
        "location_text": "荥阳 穆沟段k31列车",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "微信信息发送",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "7cdf273b7c",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0026",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "明理路与莲湖东路888路公交车 @要美腻丫",
        "location_text": "明理路与莲湖东路888路公交车",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "5863d19cf5",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0027",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "荥阳市 崔庙镇 王宗店村",
        "location_text": "荥阳市 崔庙镇 王宗店村",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "c85fe0a8ba",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0028",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "河南省郑州市大学北路51号院6号楼3单元26号，一楼进院之后左手边第一个路口直走，门口有棵香椿树！ 156****52",
        "location_text": "河南省郑州市大学北路51号院6号楼3单元26号，一楼进院之后左手边第一个路口直走，门口有棵香椿树！",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "微博",
        "verified": "已核实",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "690d7da282",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "大学北路",
        "matched_type": "road",
        "matched_lon": 113.63800445,
        "matched_lat": 34.7485800375,
        "geo_confidence": "A",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0029",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "河南省郑州市中原区工人路中原新城学府一号3号楼3单元804 老人电话：186****33 家人电话：158****00 老人电话：186****33",
        "location_text": "河南省郑州市中原区工人路中原新城学府一号3号楼3单元804",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "已核实",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "4b79c4d6e1",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "工人路",
        "matched_type": "road",
        "matched_lon": 113.6147512,
        "matched_lat": 34.723917633333336,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0030",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州大学附属第三医院 1",
        "location_text": "郑州大学附属第三医院",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "dfc23a37d5",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0031",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "建新街77号楼一楼",
        "location_text": "建新街77号楼一楼",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "50a769bfb7",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0032",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "沙口路C口，沙口路海滩寺地铁 联系方式：135****55",
        "location_text": "沙口路C口，沙口路海滩寺地铁",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "c65e376c95",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "海滩寺",
        "matched_type": "station_line5",
        "matched_lon": 113.6446477,
        "matched_lat": 34.7754542,
        "geo_confidence": "A",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0033",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "长椿路梧桐街地铁口 已经顺利坐上车回家了",
        "location_text": "长椿路梧桐街地铁口",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "a37db69c94",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "梧桐街",
        "matched_type": "road",
        "matched_lon": 113.54518025,
        "matched_lat": 34.79519689999999,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0036",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "京广路淮河路交叉口向南大概100米到150米路东的大药房门口",
        "location_text": "京广路淮河路交叉口向南大概100米到150米路东的大药房门口",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "c4dda5cf5c",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "京广路",
        "matched_type": "road",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0037",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "一号线会展中心站旁的车库 156****93",
        "location_text": "一号线会展中心站旁的车库",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "已核实",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "20faa471c6",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0038",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "医学院，金水路与建新街合作路交叉口桥下 157****83",
        "location_text": "医学院，金水路与建新街合作路交叉口桥下",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "已核实",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "49021cad05",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "金水路",
        "matched_type": "road",
        "matched_lon": 113.680325956,
        "matched_lat": 34.764060448,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0039",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "4号线龙湖中环北",
        "location_text": "4号线龙湖中环北",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "7fe23d519b",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0040",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "管城回族区陇海北一街 新合鑫.紫荆之星大厦附近的这个好药师 大药房",
        "location_text": "管城回族区陇海北一街 新合鑫.紫荆之星大厦附近的这个好药师 大药房",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "13a0a5fb37",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0041",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "5号线隧道（沙滩寺——沙口录站）",
        "location_text": "5号线隧道（沙滩寺——沙口录站）",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "4cc2017065",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0042",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州中原区瑞达路丹尼斯",
        "location_text": "郑州中原区瑞达路丹尼斯",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "983e5c91c6",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "瑞达路",
        "matched_type": "road",
        "matched_lon": 113.565930775,
        "matched_lat": 34.7994301,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0043",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "金水区北三环辅路与金明路交叉口西南角，平安果连锁酒店旁 车辆特征：白色雷克萨斯 | 车牌号：豫A00Qc0 | 联系电话：150****22",
        "location_text": "金水区北三环辅路与金明路交叉口西南角，平安果连锁酒店旁",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "已核实",
        "urgency": "重复",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "bc1c0bd26f",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "北三环",
        "matched_type": "road",
        "matched_lon": 113.64306568,
        "matched_lat": 34.81012283,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0044",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州管城区紫辰路【中路茶城】",
        "location_text": "郑州管城区紫辰路【中路茶城】",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "404011a256",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "紫辰路",
        "matched_type": "road",
        "matched_lon": 113.7001734,
        "matched_lat": 34.69628813333333,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0045",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州市颖河西路和西三环交叉口附近",
        "location_text": "郑州市颖河西路和西三环交叉口附近",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "0f75032e0b",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "西三环",
        "matched_type": "road",
        "matched_lon": 113.58905017878789,
        "matched_lat": 34.78102712424243,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0046",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "长椿路梧桐街地铁口 目前已顺利坐车回家了，无需救援 微博id：[已脱敏]",
        "location_text": "长椿路梧桐街地铁口",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "已核实",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "15596c26ef",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "梧桐街",
        "matched_type": "road",
        "matched_lon": 113.54518025,
        "matched_lat": 34.79519689999999,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
      },
      {
        "report_id": "rs_0047",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "河南省博物馆前 失联了...本人id:朕叫思婉 185****57 微博：阿福hotest",
        "location_text": "河南省博物馆前",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "已核实",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "e51410fc11",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0048",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "颖河西路和西三环交叉口附近 136****62",
        "location_text": "颖河西路和西三环交叉口附近",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "已核实",
        "urgency": "重复",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "f1eb9e928e",
        "label": "trapped_help",
        "label_confidence": 0.7,
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        "matched_name": "西三环",
        "matched_type": "road",
        "matched_lon": 113.58905017878789,
        "matched_lat": 34.78102712424243,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
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      {
        "report_id": "rs_0049",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州二七区交通路，新田公寓二楼，心田花开 173****73",
        "location_text": "郑州二七区交通路，新田公寓二楼，心田花开",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "0c602a0a7c",
        "label": "trapped_help",
        "label_confidence": 0.7,
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        "matched_name": "交通路",
        "matched_type": "road",
        "matched_lon": 113.6410298,
        "matched_lat": 34.7316813,
        "geo_confidence": "B",
        "geo_via": "gazetteer",
        "in_zhengzhou": "True"
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      {
        "report_id": "rs_0050",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "@ 郑州百荣世贸商城A座，众多商户被困",
        "location_text": "@ 郑州百荣世贸商城A座，众多商户被困",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "e3b0c7e97f",
        "label": "trapped_help",
        "label_confidence": 0.85,
        "label_reason": "keyword",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0052",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州市新密市超化镇超化村一组 150****13",
        "location_text": "郑州市新密市超化镇超化村一组",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "微博",
        "verified": "暂未核实",
        "urgency": "强",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "8325b12320",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0053",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "荥阳市汜水卫生院",
        "location_text": "荥阳市汜水卫生院",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "c81032097c",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
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      {
        "report_id": "rs_0054",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "关虎屯地铁站A口附近 小孩子才10岁，手机关机了，他就在地铁口等着，穿着红色黄色和蓝色的儿童雨衣，手里拿一个白色袋子",
        "location_text": "关虎屯地铁站A口附近 小孩子才10岁，手机关机了，他就在地铁口等着，穿着红色黄色和蓝色的儿童雨衣，手里拿一个白色袋子",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "fe87de88d7",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0055",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州市荥阳市k31 高超阳【联系电话】：157****15",
        "location_text": "郑州市荥阳市k31",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "10faf2da0c",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0056",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州二七区建新北街思达超市这边",
        "location_text": "郑州二七区建新北街思达超市这边",
        "platform": "rescue_doc",
        "source_class": "unlabeled",
        "orig_category": "",
        "verified": "",
        "urgency": "",
        "lng": "",
        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "4413a019d4",
        "label": "trapped_help",
        "label_confidence": 0.7,
        "label_reason": "platform_prior",
        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
      },
      {
        "report_id": "rs_0057",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑大一附院河医院区 赵晏 182****19（空号）",
        "location_text": "郑大一附院河医院区",
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        "source_class": "unlabeled",
        "orig_category": "",
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        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "70ab922d1e",
        "label": "trapped_help",
        "label_confidence": 0.7,
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        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
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      {
        "report_id": "rs_0058",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑东升龙广场2号楼b座",
        "location_text": "郑东升龙广场2号楼b座",
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        "orig_category": "",
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        "urgency": "",
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        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "2d6d371805",
        "label": "trapped_help",
        "label_confidence": 0.7,
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        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
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        "report_id": "rs_0059",
        "timestamp": "2021-07-20 17:47:00",
        "raw_text": "郑州市郑东新区郑州航空管理学院",
        "location_text": "郑州市郑东新区郑州航空管理学院",
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        "orig_category": "",
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        "lat": "",
        "src": "S3_rescue_doc",
        "dedup_group": "2a92627e74",
        "label": "trapped_help",
        "label_confidence": 0.7,
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        "matched_name": "",
        "matched_type": "",
        "matched_lon": "",
        "matched_lat": "",
        "geo_confidence": "C",
        "geo_via": "none",
        "in_zhengzhou": "False"
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