Crowdsourcing Rapid Assessment of Collapsed Buildings Early after the Earthquake Based on Aerial Remote Sensing Image: A Case Study of Yushu Earthquake
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Wei Liu | Yong Ma | Qin Dai | Rui Guo | Shuai Xie | Shibin Liu | Caihong Ma | Jianbo Duan | W. Liu | Yong Ma | Shuai Xie | Caihong Ma | Jianbo Duan | Rui Guo | Q. Dai | Shibin Liu
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