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Detection of floods in SAR images with non-linear kernel clustering and topographic prior

机译:利用非线性核聚类和地形先验检测SAR图像中的洪水

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After a major flood catastrophe, a precious information is the delineation of the affected areas. Remote sensing imagery, especially synthetic aperture radar, allows to obtain a global and complete view of the situation. However, the detection of the flooded areas remains a challenge, especially since the reaction time for ground teams is very short. This makes the application of automatic detection routines appealing. Such methods must avoid complex parametrization, heavy computational time and long intervention by the operator. We propose an automatic three steps strategy, starting by rebalancing the different types of pixels (non-water, permanent water and flooded) using digital elevation model information, then isolating water pixels and finally separating flooded from permanent water pixels using non-linear clustering in dedicated feature spaces. Experiments on two sets of ASAR images show the effectiveness of the method competing with supervised standard log-ratio thresholding.
机译:在重大洪灾之后,宝贵的信息是对受灾地区的描绘。遥感图像,特别是合成孔径雷达,可以获取情况的全局和完整视图。但是,尤其是由于地面小队的反应时间非常短,因此检测水灾地区仍然是一个挑战。这使得自动检测程序的应用很有吸引力。这种方法必须避免复杂的参数化,繁重的计算时间以及操作员的长时间干预。我们提出了一种自动的三步策略,首先使用数字高程模型信息重新平衡不同类型的像素(非水,永久水和淹没像素),然后隔离水像素,最后使用非线性聚类法从永久像素中分离水淹专用要素空间。在两组ASAR图像上进行的实验表明,该方法与监督标准对数比阈值法相抗衡。

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