李家艺, 黄昕, 胡宇平, 张震, 张雪婷, 张淑蕾, 方兴. 夜光影像和高分辨率影像耦合的土耳其Mw 7.8地震建筑倒塌智能解译[J]. 武汉大学学报 ( 信息科学版), 2023, 48(10): 1706-1714. DOI: 10.13203/j.whugis20230275
引用本文: 李家艺, 黄昕, 胡宇平, 张震, 张雪婷, 张淑蕾, 方兴. 夜光影像和高分辨率影像耦合的土耳其Mw 7.8地震建筑倒塌智能解译[J]. 武汉大学学报 ( 信息科学版), 2023, 48(10): 1706-1714. DOI: 10.13203/j.whugis20230275
LI Jiayi, HUANG Xin, HU Yuping, ZHANG Zhen, ZHANG Xueting, ZHANG Shulei, FANG Xing. Fusion of Optical Daily and Night-time Light Remote Sensing Images for Collapsed Building Detection: A Case in Turkey Mw 7.8 Earthquake[J]. Geomatics and Information Science of Wuhan University, 2023, 48(10): 1706-1714. DOI: 10.13203/j.whugis20230275
Citation: LI Jiayi, HUANG Xin, HU Yuping, ZHANG Zhen, ZHANG Xueting, ZHANG Shulei, FANG Xing. Fusion of Optical Daily and Night-time Light Remote Sensing Images for Collapsed Building Detection: A Case in Turkey Mw 7.8 Earthquake[J]. Geomatics and Information Science of Wuhan University, 2023, 48(10): 1706-1714. DOI: 10.13203/j.whugis20230275

夜光影像和高分辨率影像耦合的土耳其Mw 7.8地震建筑倒塌智能解译

Fusion of Optical Daily and Night-time Light Remote Sensing Images for Collapsed Building Detection: A Case in Turkey Mw 7.8 Earthquake

  • 摘要: 建筑倒塌检测是震后损失评估、紧急救援的重要内容。面向2023年土耳其Mw 7.8地震的紧急救援,综合利用卫星遥感智能解译技术,耦合高空间分辨率卫星遥感影像和夜间灯光影像,以较低的时间和人力成本高效评估了土耳其Mw 7.8大地震中极灾区的建筑倒塌情况。设计了一种多层次的极灾区域与倒塌建筑快速定位方案,首先利用中等分辨率夜光遥感数据确定极灾区,然后利用高分辨率光学遥感影像深度学习技术提取倒塌建筑。设计了一种半监督深度学习方案,只需要初始化人工采集少量倒塌建筑样本,就可以通过在训练中增广获取当地样本,增强深度网络的表征能力,最终实现定位坍塌房屋。监测到阿德亚曼-卡赫拉曼马拉什-安塔基亚一线的阿拉伯板块-欧亚板块交界地带的6个城市受灾严重。从极灾区中共检测出2 377栋倒塌建筑,除努尔达吉和安塔基亚市的倒塌建筑比例超过2%外,伊斯拉希耶、蒂尔克奥卢、卡赫拉曼马拉什和阿德亚曼市倒塌建筑比例均接近于1%,通过人工核查,智能解译方案的查全率为74%~93%,证明所提方案可以及时为震后紧急救援决策提供参考。

     

    Abstract:
    Objectives The Mw 7.8 earthquake occurred in Turkey on February 6th, 2023, which is a rare powerful earthquake in recent years. Building collapse detection is an important part of post-earthquake damage assessment and emergency rescue. Facing the emergency rescue and post-earthquake disaster assessment, this paper aims to comprehensively utilize the intelligent interpretation technology of satellite remote sensing, coupled with high-resolution optical daily and night-time light remote sensing images, and to efficiently assess the collapsed buildings in the extreme disaster areas with low time and labor costs.
    Methods In this paper, we present a multi-level rapid localization scheme for disaster-affected regions. First, the proposed approach involves the utilization of low- and medium-resolution night-time light data to estimate the extent of extreme disaster areas. Subsequently, high-resolution optical remote sensing imagery is employed to extract the collapsed buildings. By training a semi-supervised deep learning network with a small number of manually collected samples, the scheme automatically identifies collapse areas, thereby facilitating the precise localization of collapsed buildings. A high-resolution architecture network, HRNet, is employed in this study. HRNet has the advantages in both sematic and spatial feature representation, and can capture the collapsed buildings with muti-scale characteristics.
    Results Six cities along the border between the Arab Plate and the Eurasian Plate are severely affected, from Adelman to Kahraman Marrash, and then to Antakia. A total of 2 377 collapsed buildings are detected in the extreme disaster areas. Except for Nurdaji and Antakia cities, where the proportion of collapsed buildings exceeded 2%, the proportion of collapsed buildings in the other four cities is close to 1%. After manual verification, the recall rate of the intelligent interpretation plan is between 74% and 93%.
    Conclusions The efficiency and effectiveness of this approach are demonstrated through its application in assessing the building collapse situation after the Mw 7.8 earthquake in Turkey. The proposed work can serve as a timely reference for macro decision-making in post-earthquake emergency rescue operations.

     

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