基于多源遥感时序特征和卷积神经网络的露天矿区土地利用分类
Land use classification of open-pit mining areas based on multi-source remote sensing time series features and convolutional neural networks
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摘要: 矿区资源开发会导致土地利用格局发生变化,造成生态环境破坏。因此,进行土地利用分类对矿区生态修复和管理至关重要。目前,遥感影像广泛应用于土地利用分类,但单一数据源在矿区分类中存在局限,常规机器学习算法亦难以有效应对该任务。为提高分类精度,该文以内蒙古自治区鄂尔多斯市东胜区东部区域为研究区,利用卷积神经网络融合多源遥感数据实现矿区土地利用分类。首先,利用Sentinel-1/2、珞珈一号和美国国家航空航天局(National Aeronautics and Spoce Administration,NASA)数字高程模型(digital elevation model,DEM)数据构建多源遥感时序特征集合; 其次,联合Relief-F与随机森林(random forest,RF)算法实现特征优选; 最后,基于ResNet50卷积神经网络模型挖掘特征中的地物信息,以实现矿区的用地分类。结果表明: 文章提出的方法土地利用分类的总体精度(overall accuracy,OA)为95.36%,Kappa系数为0.942 1,高于RF等常规方法,Relief-F与RF综合特征优选可以提高多种分类器的分类精度。该研究为矿区土地利用分类提供了方法参考和借鉴。Abstract: Resource development in mining areas alters land use patterns and causes ecological damage. This renders land use identification crucial to ecological restoration and management in mining areas. Although remote sensing imagery is widely used for land use classification, the use of a single data source has limitations in the classification for mining areas. Additionally, it is difficult for conventional machine learning algorithms to effectively perform the classification. To improve classification accuracy, this study investigated the eastern part of Dongsheng District, Ordos City as an example to conduct land use classification for mining areas using a convolutional neural network (CNN) combined with multi-source remote sensing data. First, a multi-source remote sensing time series feature set was developed using data from Sentinel-1/2, Luojia-1 01, and the NASA digital elevation model (DEM). Next, optimal features were selected using the Relief-F algorithm combined with a random forest algorithm. Finally, information on surface features was extracted using the ResNet50 CNN model. This facilitated land use classification in the mining area. The results show that the proposed method achieved an overall land use classification accuracy of 95.36% and a Kappa coefficient of 0.942 1, outperforming conventional methods such as the random forest approach. Furthermore, selecting optimal features using Relief-F combined with the random forest approach enhanced the classification accuracy of various classifiers. This study offers a methodological reference for land use classification of mining areas.
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