Earth observation is fundamental for a range of human activities including flood response as it offers vital information to decision makers. Semantic segmentation plays a key role in mapping the raw hyper-spectral data coming from the satellites into a human understandable form assigning class labels to each pixel. In this paper, we introduce a prototype-based interpretable deep semantic segmentation (IDSS) method, which is highly accurate as well as interpretable. Its parameters are in orders of magnitude less than the number of parameters used by deep networks such as U-Net and are clearly interpretable by humans. The proposed here IDSS offers a transparent structure that allows users to inspect and audit the algorithm's decision. Results have demonstrated that IDSS could surpass other algorithms, including U-Net, in terms of IoU (Intersection over Union) total water and Recall total water. We used WorldFloods data set for our experiments and plan to use the semantic segmentation results combined with masks for permanent water to detect flood events.
翻译:对一系列人类活动来说,地球观测至关重要,包括洪水反应,因为它为决策者提供了重要信息。语义分割在将卫星产生的原始超光谱数据绘制成人类可理解的形式,为每个像素分配类标签方面发挥着关键作用。在本文中,我们引入了一种基于原型的、可解释的深海语义分离(IDSS)方法,该方法非常精确,并且可以解释。其参数数量小于诸如U-Net等深网络使用的参数数量,并且可以由人类明确解释。此处提议的IDSS提供了一个透明的结构,使用户能够检查和审计算法决定。结果显示,IDSS可以超过其他算法,包括U-Net,用IoU(Intercrectionover Wy)总水和回调总水。我们用WorldFloods数据集进行实验,并计划使用含有永久水面罩的语义分解结果来探测洪水事件。