Remote sensing road segmentation and breakpoint repair based on deep learning

Yuanyuan Li, Haibo Zhang, Lei Cai, Junping Ren, Shengting Xiang
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Abstract

The current high-resolution remote sensing image road extraction methods mostly use an end-to-end network model to predict road, which is helpful to the global feature expression of road extraction, but ignores local feature express. Therefore, in order to better balance the global information and local information extracted by the road, in this paper, we use SEResNext to extract rich semantic information from low to high channel to construct the encoder, and use the global mixed feature module (GMFM) to upsample and recover to the original image size to construct the decoder, in which dense skip connections promote semantic information fusion. In addition, we use polynomial fitting and morphological-based methods to repair road breakpoints. Experiments show that compared with similar networks, the accuracy and completeness of road extraction in this paper have been significantly improved, the precision achieves 88.765%, the recall is 84.224%, and the achieves 86.435%.
基于深度学习的遥感道路分割与断点修复
目前的高分辨率遥感图像道路提取方法多采用端到端网络模型进行道路预测,有利于道路提取的全局特征表达,而忽略了局部特征表达。因此,为了更好地平衡道路提取的全局信息和局部信息,本文使用SEResNext从低到高通道提取丰富的语义信息来构建编码器,使用全局混合特征模块(GMFM)上采样并恢复到原始图像大小来构建解码器,其中密集的跳跃连接促进了语义信息的融合。此外,我们使用多项式拟合和基于形态学的方法来修复道路断点。实验表明,与同类网络相比,本文道路提取的准确率和完整性有了显著提高,准确率达到88.765%,召回率达到84.224%,召回率达到86.435%。
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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