Rapid assessment after a natural disaster is key for prioritizing emergency resources. In the case of landslides, rapid assessment involves determining the extent of the area affected and measuring the size and location of individual landslides. Synthetic Aperture Radar (SAR) is an active remote sensing technique that is unaffected by weather conditions. Deep Learning algorithms can be applied to SAR data, but training them requires large labeled datasets. In the case of landslides, these datasets are laborious to produce for segmentation, and often they are not available for the specific region in which the event occurred. Here, we study how deep learning algorithms for landslide segmentation on SAR products can benefit from pretraining on a simpler task and from data from different regions. The method we explore consists of two training stages. First, we learn the task of identifying whether a SAR image contains any landslides or not. Then, we learn to segment in a sparsely labeled scenario where half of the data do not contain landslides. We test whether the inclusion of feature embeddings derived from stage-1 helps with landslide detection in stage-2. We find that it leads to minor improvements in the Area Under the Precision-Recall Curve, but also to a significantly lower false positive rate in areas without landslides and an improved estimate of the average number of landslide pixels in a chip. A more accurate pixel count allows to identify the most affected areas with higher confidence. This could be valuable in rapid response scenarios where prioritization of resources at a global scale is important. We make our code publicly available at https://github.com/VMBoehm/SAR-landslide-detection-pretraining.
翻译:自然灾害后快速评估是确定紧急资源优先次序的关键。在滑坡的情况下,快速评估涉及确定受影响地区的范围,并衡量个人滑坡的大小和位置。合成孔径雷达(SAR)是一种不受天气条件影响的主动遥感技术。深学习算法可以适用于合成孔径雷达数据,但培训它们需要大量的标签数据集。在滑坡的情况下,这些数据元件难以产生分解,而且往往无法为事件发生的具体区域提供这些数据。这里,我们研究合成孔径雷达产品滑坡分割的深度学习算法如何能从更简单的任务前和不同区域的数据中获益。我们探索的方法包括两个阶段的培训。首先,我们学会确定合成孔径雷达图像是否包含任何滑坡,然后,我们学会在标签模糊的假设中进行分解,其中一半的数据不包含滑坡。我们测试从第1阶段得出的特征嵌入点是否有助于在第2阶段探测滑坡。我们发现,这导致在区域内进行较重要的改进,在精确的深度流流流值地区,在精确的平流轨道上,在精确度区域进行精确度上,我们发现比重的平流流流流流/平流路路路路路段区域,在准确度估算中,比值增加。