Quantitative flood assessment: Case study of floods in Germany

C. Dumitru, S. Cui, M. Datcu
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引用次数: 2

Abstract

In this paper, we present a quantitative analysis for a rapid mapping scenario that performs a damage assessment of the 2013 floods in Germany. The scenario is created using pre-disaster and post-disaster TerraSAR-X images and an automated annotation system. Our data set is tiled into patches and Gabor filters are used as a primitive feature method applied to each patch separately. An active learning system based on support vector machine is implemented in order to group the features into categories. Once all categories are identified, these are semantically annotated using reference data as ground truth. In our evaluation 7 categories were retrieved with their specific taxonomies defined using our previous hierarchical annotation scheme. We show that the system supports rapid mapping scenarios (e.g., floods, tsunami, earthquake, etc.) and interactive mapping generation. In addition, with the help of this system, quantitative assessment of disasters can be carried out.
定量洪水评估:以德国洪水为例
在本文中,我们对2013年德国洪水灾害评估的快速绘图场景进行了定量分析。该场景是使用灾前和灾后TerraSAR-X图像和自动注释系统创建的。我们的数据集被平铺成小块,Gabor滤波器被用作原始特征方法,分别应用于每个小块。为了对特征进行分类,实现了基于支持向量机的主动学习系统。一旦确定了所有类别,就使用参考数据作为基础真值对它们进行语义注释。在我们的评估中,检索了7个类别,并使用之前的分层注释方案定义了它们的特定分类法。我们展示了该系统支持快速地图场景(例如,洪水,海啸,地震等)和交互式地图生成。此外,借助该系统可以对灾害进行定量评估。
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