基于sentinel-1图像的深度学习水体提取与洪水演化分析方法

Zhixin Zhang, Dan Liu, Zhe Liu, Yanjun Qiao, Changan Zheng, Yong Gan
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引用次数: 0

摘要

水体提取技术在水源管理和监测中发挥着重要作用。近年来,基于阈值的方法,如双峰阈值分割(BTS)和最大类间方差(OTSU)在水体提取中得到了广泛的应用。然而,这些方法只考虑像素强度,忽略了相邻像素之间的空间相关性,导致分类结果错误。为了解决这个问题,我们利用基于深度学习的水体提取模型,该模型既考虑了像素强度,又考虑了相邻像素之间的空间相关性。几种基于深度学习的方法,特别是Unet,在我们从sentinel- 1图像中获取的手工数据集上优于基于阈值的方法。最后将Unet应用于2021年夏季河南新乡地区的洪水演化分析,有效地显示了洪水演化趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning based methods for water body extraction and flooding evolution analysis based on sentinel-1 images
Water body extraction technique has played an important role in water source management and monitoring. In recent years, Threshold based methods, such as Bimodal threshold segmentation (BTS) and maximum between-class variance (OTSU), have widely applied in water body extraction. However, these methods only consider pixel intensity and ignore the spatial correlation among neighboring pixels, resulting in misclassified results. To address this issue, we exploit deep learning based models for water body extraction, which both considers the pixel intensity and spatial correlation among neighboring pixels. Several deep learning based methods, especially Unet, outperform threshold based methods on our hand-crafted dataset acquired from sentinel-l images. The Unet is finally applied in flooding evolution analysis of Xinxiang, Henan province in the summer of 2021, effectively showing the flooding evolution trend.
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