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A local thresholding approach to flood water delineation using Sentinel-1 SAR imagery

机译:使用Sentinel-1 SAR图像进行洪水划界的局部阈值方法

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Emergency response to floods requires timely information on water extents, which can be produced by satellite based remote sensing. As the synthetic aperture radar (SAR) can emit and receive signal in nighttime or cloudy conditions, it is particularly suitable to delineate water extent during flood events. Thresholding SAR imagery is one of the most widely used approaches to delineate water extent for its effectiveness and efficiency. However, most thresholding methods rely on a single threshold to separate water and land without considering the complexity and variability of different land surface types in an image. To account for the heterogeneous surface characteristics, this paper proposes a new local thresholding method to water delineation with SAR images. Specifically, our method follows four major steps. First, a global threshold is applied to the SAR imagery to delineate initial water pixels, from which non-water pixels are further clustered into several land surface types. This divides the SAR imagery into one water cluster and several land clusters. Second, local thresholds are estimated at each subset of land cluster paired with water cluster by fitting Gamma distributions to the back-scatter intensities of the combined water/land pixels in each subset. Third, local water extents are delineated from each subset and then merged as the union of all subsets. The results are combined across multiple polarizations by taking an intersection operation to generate the global inundation extent. Finally, the flood water extent is further improved by imposing basic hydrologic constraints. This approach is fast and fully automated for flood detection. Our experiments using Sentinel-1 SAR imagery show that the proposed local thresholding approach could distinguish water from non-water with significantly higher accuracy (4-13% improvement in the harmonic mean of user's and producer's accuracy of water) than conventional global-thresholding methods.
机译:对洪水的应急响应要求及时提供有关水域范围的信息,这些信息可以通过基于卫星的遥感来产生。由于合成孔径雷达(SAR)可以在夜间或阴天条件下发射和接收信号,因此特别适合在洪水事件期间描绘水位。阈值SAR图像是描述水域有效性和效率的最广泛使用的方法之一。然而,大多数阈值方法依靠单个阈值来分离水和土地,而不考虑图像中不同陆面类型的复杂性和可变性。为了解决表面异质性的问题,本文提出了一种新的局部阈值化方法,用于SAR图像的水面勾画。具体来说,我们的方法遵循四个主要步骤。首先,将全局阈值应用于SAR图像,以描绘初始水像素,非水像素从中进一步聚类为几种陆地表面类型。这将SAR图像分为一个水簇和几个陆地簇。其次,通过将Gamma分布拟合到每个子集中组合的水/土地像素的反向散射强度,来估计与水簇配对的土地簇的每个子集的局部阈值。第三,从每个子集划定局部水域,然后合并为所有子集的并集。通过采取相交操作以生成全局淹没范围,将结果跨多个极化合并。最后,通过施加基本的水文约束条件进一步提高了洪水范围。这种方法可以快速,完全自动化地检测洪水。我们使用Sentinel-1 SAR图像进行的实验表明,与传统的全局阈值方法相比,所提出的局部阈值处理方法可以将水与非水区分开来,其准确性要高得多(用户和生产者的水谐波精度平均值提高4-13%)。 。

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