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利用多尺度挤压激励网络提取煤矿采场

马世斌 辛荣芳 李宗仁 黄丽 王泰山 孔德才

地理空间信息2026,Vol.24Issue(5):16-20,5.
地理空间信息2026,Vol.24Issue(5):16-20,5.DOI:10.3969/j.issn.1672-4623.2026.05.004

利用多尺度挤压激励网络提取煤矿采场

Coal Mining Area Extraction Based on Multi-scale Squeeze-and-excitation Network

马世斌 1辛荣芳 1李宗仁 1黄丽 1王泰山 1孔德才1

作者信息

  • 1. 青海省地质调查院,青海 西宁 810012||青海省青藏高原北祁连地质过程与矿产资源重点实验室,青海 西宁 810012||青海省遥感大数据工程技术研究中心,青海 西宁 810012
  • 折叠

摘要

Abstract

Due to the large scale of mining area targets and the high complexity of scenes,traditional methods often fall short in achieving complete and accurate extractions.To tackle this issue,we presented a coal mining area extraction method from high-resolution remote sensing images based on deep convolutional neural multi-scale squeeze-and-excitation(SE)network.This method takes U-Net semantic segmentation network as its framework and EfficientNet-B3 network as the backbone.By meticulous design and introducing the multi-scale SE structure,it is aimed at more effectively mining multi-level and multi-scale feature information,thus enhancing the accuracy and integrity of coal mining area extraction.To thoroughly analyze the feature extraction effect of introducing SE module,we carried out experiments on three designed networks,one without the multi-scale strategy,one with multi-scale strategy 1,and one with both multi-scale strategy 1 and 2.The results show that the mean intersection over unions of three models are 0.751 9,0.799 8 and 0.810 4,and the verification accuracy are 0.969 2,0.978 5 and 0.989 0,respectively,which illustrates that this model can effectively enhance the integrity and accuracy of coal mining area extraction.

关键词

采场/卷积神经网络/多尺度特征/SE模块/EfficientNet

Key words

mining area/convolutional neural network/multi-scale feature/SE module/EfficientNet

分类

天文与地球科学

引用本文复制引用

马世斌,辛荣芳,李宗仁,黄丽,王泰山,孔德才..利用多尺度挤压激励网络提取煤矿采场[J].地理空间信息,2026,24(5):16-20,5.

基金项目

2025年青海省"昆仑英才·高端创新创业人才"拔尖人才专项资金资助项目. ()

地理空间信息

1672-4623

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