Remote Sensing Image River Segmentation Method Based on U-Net

Qiang Cai, Ruyi Wan, Haisheng Li, Chen Wang, Haodong Chang
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Abstract

River segmentation based on remote sensing images plays an important role in water conservancy business work, water wading monitoring work, and flood disaster prevention. In actual remote sensing images of rivers, most of the backgrounds are complex, and there is no public remote sensing image dataset specifically for the study of river segmentation. The traditional river segmentation methods have rough edge information and serious noise. To solve the above problems, this paper firstly preprocesses the Gaofen Image Dataset (GID) and Remote Sensing Image Block Segmentation Dataset (BDCI), and creates two datasets for river segmentation in high-resolution remote sensing images respectively (GID-river and BDCI-river) and then proposed a river segmentation method based on U-Net. On the basis of the original U-Net, the ResNet34 and VGG16 structures were combined to strengthen the feature extraction ability of the network, so as to achieve more accurate river edge details. The experimental results shows the mIoU of the ResNet34-UNet network on the GID-river dataset reaches 93.6%, and the mPA of the VGG16-UNet network on the BDCI-river dataset reaches 82.1%.
基于U-Net的遥感图像河流分割方法
基于遥感影像的河流分割在水利业务工作、涉水监测工作、防洪等方面发挥着重要作用。在实际的河流遥感图像中,大多数背景复杂,没有专门用于河流分割研究的公共遥感图像数据集。传统的河流分割方法边缘信息粗糙,噪声严重。针对上述问题,本文首先对高分影像数据集(GID)和遥感影像块分割数据集(BDCI)进行预处理,分别创建高分辨率遥感影像中的河流分割数据集(GID-river和BDCI-river),然后提出一种基于U-Net的河流分割方法。在原有U-Net的基础上,结合ResNet34和VGG16结构,增强网络的特征提取能力,从而获得更精确的河沿细节。实验结果表明,ResNet34-UNet网络在GID-river数据集上的mIoU达到93.6%,VGG16-UNet网络在BDCI-river数据集上的mPA达到82.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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