Intelligent assessment of building damage of 2023 Turkey-Syria Earthquake by multiple remote sensing approaches

Xiao Yu, Xie Hu, Yuqi Song, Susu Xu, Xuechun Li, Xiaodong Song, Xuanmei Fan, Fang Wang
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Abstract

A catastrophic Mw7.8 earthquake hit southeast Turkey and northwest Syria on February 6th, 2023, leading to more than 44 k deaths and 160 k building collapses. The interpretation of earthquake-triggered building damage is usually subjective, labor intensive, and limited by accessibility to the sites and the availability of instant, high-resolution images. Here we propose a multi-class damage detection (MCDD) model enlightened by artificial intelligence to synergize four variables, i.e., amplitude dispersion index (ADI) and damage proxy (DP) map derived from Synthetic Aperture Radar (SAR) images, the change of the normalized difference built-up index (NDBI) derived from optical remote sensing images, as well as peak ground acceleration (PGA). This approach allows us to characterize damage on a large, tectonic scale and a small, individual-building scale. The integration of multiple variables in classifying damage levels into no damage, slight damage, and serious damage (including partial or complete collapses) excels the traditional practice of solely use of DP by 11.25% in performance. Our proposed approach can quantitatively and automatically sort out different building damage levels from publicly available satellite observations, which helps prioritize the rescue mission in response to emergent disasters.

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利用多种遥感方法智能评估 2023 年土耳其-叙利亚地震的建筑物破坏情况
2023 年 2 月 6 日,一场 Mw7.8 级的灾难性地震袭击了土耳其东南部和叙利亚西北部,导致超过 4.4 万人死亡,16 万栋建筑物倒塌。对地震引发的建筑物损坏的解释通常是主观的、劳动密集型的,并受限于现场的可及性和即时高分辨率图像的可用性。在此,我们提出了一个由人工智能启发的多类破坏检测(MCDD)模型,以协同四个变量,即从合成孔径雷达(SAR)图像中提取的振幅离散指数(ADI)和破坏替代图(DP)、从光学遥感图像中提取的归一化差异建筑指数(NDBI)变化以及峰值地面加速度(PGA)。通过这种方法,我们可以从大的构造尺度和小的单个建筑物尺度来描述破坏情况。在将破坏程度划分为无破坏、轻微破坏和严重破坏(包括部分或完全坍塌)时,多种变量的整合比传统的仅使用 DP 的方法性能高出 11.25%。我们提出的方法可以从公开的卫星观测数据中定量、自动地划分出不同的建筑物损坏等级,有助于在应对突发灾害时确定救援任务的优先次序。
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