| 注册
首页|期刊导航|水文地质工程地质|天山中段土地损毁自动分类模型的构建与应用

天山中段土地损毁自动分类模型的构建与应用

张紫昭 王雪野 陈伟楠 刘培志 胡杨 陈凯 黄军朋 史光明 张艳阳 赖润森 朱建华

水文地质工程地质2025,Vol.52Issue(4):26-38,13.
水文地质工程地质2025,Vol.52Issue(4):26-38,13.DOI:10.16030/j.cnki.issn.1000-3665.202503014

天山中段土地损毁自动分类模型的构建与应用

Build and application of automatic classification model of land damage in the middle section of Tianshan Mountains

张紫昭 1王雪野 2陈伟楠 2刘培志 1胡杨 1陈凯 1黄军朋 1史光明 1张艳阳 1赖润森 1朱建华2

作者信息

  • 1. 新疆大学地质与矿业工程学院,新疆乌鲁木齐 830039
  • 2. 新疆维吾尔自治区地质环境监测研究院,新疆乌鲁木齐 830099
  • 折叠

摘要

Abstract

The middle section of the Tianshan Mountains in Xinjiang is rich in mineral resources,but the problem of land damage has been exacerbated by high-intensity mining activities.In order to solve the problems of low efficiency of mine land damage monitoring and traditional remote sensing interpretation relying on manual experience,this paper proposes an automatic classification model of remote sensing image land damage based on neural network-SENetV2-COT-DeepLabV3,which is based on the DeepLabV3 model and integrates the Contextual Transformer(COT)module and the SENetV2 module,so as to enhance the ability of context feature extraction and channel attention mechanism.Optimize the model's segmentation ability for complex mine features.Firstly,according to the high-resolution series of remote sensing images,a sample set of 59 198 samples was constructed for the middle section of the Tianshan Mountains,which was extended to 177 594 samples through data augmentation.Then,the SENetV2-COT-DeepLabV3 model was trained to improve its generalization ability and recognition accuracy,and accurately grasp the distribution and extent of land damage caused by mineral resource development.Finally,through comparative experiments with FCN,UNeT,PSPNeT and other models,it is concluded that the improved model is better than the mainstream models such as FCN and PSPNet in four indicators:MIoU,mRecall,mPrecision,and mDice,and the segmentation accuracy is 1.63%-2.34%higher than that of DeepLabV3.Based on the model,a deep learning remote sensing interpretation system for land damage types in mining areas was built on the Pycharm platform,which has been deployed to the local mine management department,with a recognition accuracy of more than 85%,realizing high-precision and high-efficiency land damage identification,providing an intelligent solution for dynamic monitoring and ecological restoration management of land damage in mining areas,and promoting the coordinated development of mine development and environmental protection.

关键词

天山中段/土地损毁模型/神经网络/自动分类/矿山生态修复

Key words

middle Tianshan/land damage model/neural network/automatic classification/mine ecological restoration

分类

资源环境

引用本文复制引用

张紫昭,王雪野,陈伟楠,刘培志,胡杨,陈凯,黄军朋,史光明,张艳阳,赖润森,朱建华..天山中段土地损毁自动分类模型的构建与应用[J].水文地质工程地质,2025,52(4):26-38,13.

基金项目

第三次新疆综合科学考察项目(2022xjkk1001) (2022xjkk1001)

新疆维吾尔自治区天山英才培养计划项目(2023TSYCCX0010) (2023TSYCCX0010)

水文地质工程地质

OA北大核心

1000-3665

访问量0
|
下载量0
段落导航相关论文