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DSMC:全局—局部特征混合编码的遥感影像道路分割模型

彭劲松 赵林峰 刘慧娟 陈琼 许慧 陈海佳

地理空间信息2026,Vol.24Issue(5):1-5,5.
地理空间信息2026,Vol.24Issue(5):1-5,5.DOI:10.3969/j.issn.1672-4623.2026.05.001

DSMC:全局—局部特征混合编码的遥感影像道路分割模型

DSMC:A Remote Sensing Image Road Segmentation Model Based on Global-Local Feature Hybrid Encoding

彭劲松 1赵林峰 1刘慧娟 1陈琼 1许慧 1陈海佳2

作者信息

  • 1. 湖南环境生物职业技术学院,湖南 衡阳 421005
  • 2. 武汉象印科技有限责任公司,湖北 武汉 430200
  • 折叠

摘要

Abstract

Aiming at the problems of fragmented segmentation results and error segmentation of small objects when existing methods being used to segment the internal road structure of remote sensing images,we proposed a remote sensing image road segmentation model based on global-local feature hybrid encoding.We used deep separable convolution and shift window TransformerV2 to hybrid encode the details of roads and global context information.In the decoding stage,we employed content-aware reassembly of features and hybrid local channel attention units to filter negative samples and perform fine-scale upsampling of small-size features,and used unified focal loss as the training loss function to guide the model to learn road sample features through parameter weighting.Experimental results show that the F1-scores of this model on the public datasets CHN6-CUG and DeepGlobe Road are 90.68%and 91.35%,respectively,which are 4.26%and 3.81%higher than those of Swin-UNet model.Compared with PSPNet,UNet++and other models,the proposed model exhibits the best performance.

关键词

遥感道路分割/全局—局部特征混合编码/内容感知特征重组/特征过滤/统一焦点损失

Key words

remote sensing road segmentation/global-local feature hybrid encoding/content-aware reassembly of features/feature filter/unified focal loss

分类

天文与地球科学

引用本文复制引用

彭劲松,赵林峰,刘慧娟,陈琼,许慧,陈海佳..DSMC:全局—局部特征混合编码的遥感影像道路分割模型[J].地理空间信息,2026,24(5):1-5,5.

基金项目

2023年度湖南省教育厅科学研究资助项目(23C0634) (23C0634)

湖南环境生物职业技术学院支柱工程. ()

地理空间信息

1672-4623

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