Extraction of Disaster Area from Satellite Image by combining Machine Learning and Image Processing Technology

D. Seno, S. Kubo, C. Isouchi, H. Yoshida
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Abstract

. In recent years, heavy rain which frequently occurred in various places in Japan have been caused severe damage. It is important to identify the damaged area for disaster recovery and reconstruction. In this study, we focus on the optical satellite images that are easy to process and interpret, and extract the damaged area by combining a land cover classification method using machine learning and an additive color mixture method. As the results, it is possible to visually express the land cover changes before and after the disasters in a specific category and to extract the damaged area from the optical satellite image.
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结合机器学习和图像处理技术的卫星图像灾区提取
. 近年来,日本各地频繁发生的暴雨造成了严重的破坏。确定受灾地区对灾后恢复和重建至关重要。在本研究中,我们针对易于处理和解译的光学卫星图像,结合机器学习的土地覆盖分类方法和加色混合方法提取受损区域。因此,可以直观地表达灾害前后某一类土地覆盖变化,并从光学卫星图像中提取受损区域。
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