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Sentinel-1 Global Coverage Foreshortening Mask Extraction: an Open Source Implementation Based on Google Earth Engine

机译:Sentinel-1全球覆盖范围缩短掩模提取:基于Google Earth Engine的开源实现

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It is well known that SAR imagery is affected by SAR geometric distortions due to the SAR imaging process (i.e. Layover, Foreshortening and Shadows). Specially in mountainous areas these distortions affect large portions of the images and in some applications, these areas shouldn't be included in analysis. Using a foreshortening mask is a suitable solution, but finding the mask is challenging. The aim of this research is to exploit the fusion of Sentinel-1 multi-temporal images and SRTM DEM to produce a quasi-global foreshortening mask using the Google Earth Engine (GEE), cloud-based platform. The mean value of multi-temporal Sentinel-1 images is calculated. Then a local minimum algorithm finds probable foreshortening area. Aspect and slope information from SRTM DEM are used to refine Sentinel-1 derived foreshortening mask. The proposed method is tested in British Columbia (Canada), Everest Mountain (Nepal), and Mazandaran (Iran). The results demonstrate the reliability of proposed method to detect the foreshortening area.
机译:众所周知,由于SAR成像过程(即,重叠,透视和阴影),SAR图像会受到SAR几何失真的影响。特别是在山区,这些失真会影响图像的大部分,在某些应用中,这些区域不应包含在分析中。使用缩短遮罩是一种合适的解决方案,但是找到遮罩却是一个挑战。这项研究的目的是利用基于云的Google Earth Engine(GEE),利用Sentinel-1多时相图像和SRTM DEM的融合来生成准全局透视蒙版。计算多时间Sentinel-1图像的平均值。然后,局部最小算法找到可能的缩短区域。来自SRTM DEM的宽高比和坡度信息用于优化Sentinel-1派生的缩短蒙版。该方法在不列颠哥伦比亚省(加拿大),珠穆朗玛峰山(尼泊尔)和马赞丹兰(伊朗)进行了测试。结果证明了所提出的检测缩短区域的方法的可靠性。

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