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基于改进DenseNet网络的多源遥感影像露天开采区智能提取方法
引用本文:张峰极,吴艳兰,姚雪东,梁泽毓.基于改进DenseNet网络的多源遥感影像露天开采区智能提取方法[J].遥感技术与应用,2020,35(3):673-684.
作者姓名:张峰极  吴艳兰  姚雪东  梁泽毓
作者单位:1.安徽大学资源与环境工程学院,安徽 合肥 230601;2.安徽省地理信息智能技术工程研究中心,安徽 合肥 230000
基金项目:国家自然科学基金项目(41271445);安徽省自然科学基金项目(1308085MD52)
摘    要:利用遥感技术对露天开采区进行信息提取和监测已成为解决矿山自然环境问题的重要手段。通过改进带密集连接的全卷积神经网络,构建露天开采区样本库,并训练了针对多源遥感数据的露天开采区提取模型,最终实现对铜陵地区露天开采区的全自动提取。与传统分类方法和深度学习方法相比,该方法在基于像元和基于对象的评价方面具有较好的精度,其中像元精度PA:0.977,交并比IoU:0.721,综合评价指标F1:0.838,Kappa系数:0.825,召回率:0.913,漏警率:0.087,虚警率:0.533。同时,该模型对于匀色较差的GoogleEarth影像也有较好的提取效果,表现出较强的泛化性和适用性,在多源遥感影像露天开采区提取方面具有较强的应用价值。

关 键 词:深度学习  全卷积神经网络  DenseNet  露天开采区提取  全自动化  
收稿时间:2019-01-18

Opencast Mining Area Intelligent Extraction Method for Multi-source Remote Sensing Image based on Improved DenseNet
Fengji Zhang,Yanlan Wu,Xuedong Yao,Zeyu Liang.Opencast Mining Area Intelligent Extraction Method for Multi-source Remote Sensing Image based on Improved DenseNet[J].Remote Sensing Technology and Application,2020,35(3):673-684.
Authors:Fengji Zhang  Yanlan Wu  Xuedong Yao  Zeyu Liang
Abstract:The use of remote sensing technology for information extraction and monitoring of open-pit mining areas has become an important means to solve the natural environment problems of mines. Firstly, this paper improves the fully convolutional neural network with dense block. Then, the opencast mining area sample library is constructed, and the open-pit mining area extraction model for multi-source remote sensing data is trained. Finally, the automatic extraction of the opencast mining area is realized in Tongling. The results show that compared with traditional classification methods and deep learning methods, the proposed method has better accuracy in pixel-based and object-based evaluation. Specifically, the Pixel Accuracy (PA), Intersection over Union (IoU), F1, Kappa Coefficient, Recall, Missing Alarm and False Alarm is 0.977, 0.721, 0.838, 0.825, 0.913, 0.087 and 0.533, respectively. The model also has a great extraction effect for Google-Earth images with poor homogeneity, showing strong generalization and applicability. Therefore, the proposed model of this paper has wide application value in the extraction of opencast mining area by using multi-source remote sensing images.
Keywords:Deep learning  Fully-Convolutional Neural Network  DenseNet  Opencast mining extraction  Fully automation  
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