基于Sentinel-1影像的马来西亚土地利用和土地覆盖SAR2SAR降噪方法

Muhammad Azzam A. Wahab, Md Nazri Safar, S. Hashim
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引用次数: 0

摘要

虽然合成孔径雷达(SAR)图像通常被视为灰度图像,但在解释土地利用和土地覆盖(LULC)图像时必须特别注意。长期以来,SAR一直被视为光学图像的可行替代方案,因为它以多种方式与地面特征相互作用,并且受天气条件的影响较小。与光学图像不同,SAR图像存在散斑噪声;因此,利用SAR数据进行精确的LULC制图是非常重要的。在这项工作中,采用了最近提出的SAR2SAR降噪方法。自我监督方法基于深度学习模型,可以在短时间内生成参考较少的无斑点图像。该方法已应用于利用地面距离探测(GRD) sentinel - 1数据评估马来西亚的五类低密度土地资源:茂密森林、稻田、城市地区、空地和水体。结果表明,利用SAR2SAR降噪方法中基于伪色的去噪VV和VH复合材料,与光学图像一样显著改善了LULC分类的可视化效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SAR2SAR Denoise Method on Land Use and Land Cover in Malaysia Using Sentinel-1 Imagery
Although synthetic aperture radar (SAR) images are often regarded as greyscale images, special care must be exercised when interpreting the images for land use and land cover (LULC). SAR has long been regarded as a viable alternative to optical images because it interacts with ground features in a variety of ways and is less influenced by weather conditions. Unlike optical images, SAR images suffer from speckle noise; therefore, accurate LULC mapping with SAR data is important. In this work, the recently proposed SAR2SAR denoise method has been employed. The self-supervision method is based on a deep learning model that can generate a speckle- free image with few references in a short amount of time. The proposed method has been applied to evaluate five categories of L ULC in Malaysia with ground range detected (GRD) Sentinel-l data: dense forests, paddy fields, urban areas, cleared lands, and water bodies. The results showed that the use of false-color-based denoised VV and VH composites from SAR2SAR denoise method significantly improved the visualizations of LULC classes as much as optical imagery.
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