论文标题
基于深度学习的滑坡密度估算SAR数据的快速响应
Deep learning based landslide density estimation on SAR data for rapid response
论文作者
论文摘要
这项工作旨在使用合成孔径雷达(SAR)卫星成像产生滑坡密度估计,以优先考虑紧急资源以快速响应。 We use the United States Geological Survey (USGS) Landslide Inventory data annotated by experts after Hurricane María in Puerto Rico on Sept 20, 2017, and their subsequent susceptibility study which uses extensive additional information such as precipitation, soil moisture, geological terrain features, closeness to waterways and roads, etc. Since such data might not be available during other events or regions, we aimed to produce a landslide density map using only elevation在快速响应方案中,对决策者有用的SAR数据。 USGS滑坡库存中包含71,431个压倒性头部的坐标(不是它们的全部范围),是通过手动检查空中和卫星图像获得的。据估计,大约45%的滑坡小于Sentinel-1典型像素,即10M $ \ tims 1000万美元,尽管许多像素很长,但可能会在几个像素上留下痕迹。我们的方法在芯片水平(128 $ \ times $ 128 $ 128的像素,Sentinel-1分辨率)中预测正确的密度估计等级时获得了0.814 AUC,并且仅使用高程数据和多达三个SAR收购前和后胸腺,从而在灾难发生后启用了快速评估。 USGS敏感性研究报告了0.87 AUC,但在滑坡水平上进行了测量,并使用其他信息源(例如靠近河流通道,道路,降水等),在快速响应紧急情况下可能无法定期使用。
This work aims to produce landslide density estimates using Synthetic Aperture Radar (SAR) satellite imageries to prioritise emergency resources for rapid response. We use the United States Geological Survey (USGS) Landslide Inventory data annotated by experts after Hurricane María in Puerto Rico on Sept 20, 2017, and their subsequent susceptibility study which uses extensive additional information such as precipitation, soil moisture, geological terrain features, closeness to waterways and roads, etc. Since such data might not be available during other events or regions, we aimed to produce a landslide density map using only elevation and SAR data to be useful to decision-makers in rapid response scenarios. The USGS Landslide Inventory contains the coordinates of 71,431 landslide heads (not their full extent) and was obtained by manual inspection of aerial and satellite imagery. It is estimated that around 45\% of the landslides are smaller than a Sentinel-1 typical pixel which is 10m $\times$ 10m, although many are long and thin, probably leaving traces across several pixels. Our method obtains 0.814 AUC in predicting the correct density estimation class at the chip level (128$\times$128 pixels, at Sentinel-1 resolution) using only elevation data and up to three SAR acquisitions pre- and post-hurricane, thus enabling rapid assessment after a disaster. The USGS Susceptibility Study reports a 0.87 AUC, but it is measured at the landslide level and uses additional information sources (such as proximity to fluvial channels, roads, precipitation, etc.) which might not regularly be available in an rapid response emergency scenario.