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首页> 外文期刊>Remote Sensing >A Comparison of Machine Learning Algorithms for Mapping of Complex Surface-Mined and Agricultural Landscapes Using ZiYuan-3 Stereo Satellite Imagery
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A Comparison of Machine Learning Algorithms for Mapping of Complex Surface-Mined and Agricultural Landscapes Using ZiYuan-3 Stereo Satellite Imagery

机译:使用ZiYuan-3立体卫星图像对复杂地面采矿和农业景观进行映射的机器学习算法的比较

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Land cover mapping (LCM) in complex surface-mined and agricultural landscapes could contribute greatly to regulating mine exploitation and protecting mine geo-environments. However, there are some special and spectrally similar land covers in these landscapes which increase the difficulty in LCM when employing high spatial resolution images. There is currently no research on these mixed complex landscapes. The present study focused on LCM in such a mixed complex landscape located in Wuhan City, China. A procedure combining ZiYuan-3 (ZY-3) stereo satellite imagery, the feature selection (FS) method, and machine learning algorithms (MLAs) (random forest, RF; support vector machine, SVM; artificial neural network, ANN) was proposed and first examined for both LCM of surface-mined and agricultural landscapes (MSMAL) and classification of surface-mined land (CSML), respectively. The mean and standard deviation filters of spectral bands and topographic features derived from ZY-3 stereo images were newly introduced. Comparisons of three MLAs, including their sensitivities to FS and whether FS resulted in significant influences, were conducted for the first time in the present study. The following conclusions are drawn. Textures were of little use, and the novel features contributed to improve classification accuracy. Regarding the influence of FS: FS substantially reduced feature set (by 68% for MSMAL and 87% for CSML), and often improved classification accuracies (with an average value of 4.48% for MSMAL using three MLAs, and 11.39% for CSML using RF and SVM); FS showed statistically significant improvements except for ANN-based MSMAL; SVM was most sensitive to FS, followed by ANN and RF. Regarding comparisons of MLAs: for MSMAL based on feature subset, RF achieved the greatest overall accuracy of 77.57%, followed by SVM and ANN; for CSML, SVM had the highest accuracies (87.34%), followed by RF and ANN; based on the feature subsets, significant differences were observed for MSMAL and CSML using any pair of MLAs. In general, the proposed approach can contribute to LCM in complex surface-mined and agricultural landscapes.
机译:复杂的露天开采和农业景观中的土地覆盖图(LCM)可以极大地有助于规范矿山开采和保护矿山的地质环境。但是,这些景观中有一些特殊且光谱相似的土地覆被,这在采用高空间分辨率图像时增加了LCM的难度。目前还没有关于这些混合复杂景观的研究。本研究的重点是位于中国武汉市这样一个复杂的复杂景观中的LCM。提出了结合ZiYuan-3(ZY-3)立体卫星图像,特征选择(FS)方法和机器学习算法(MLA)(随机森林,RF;支持向量机,SVM;人工神经网络,ANN)的过程首先分别检查了地表和农业景观的LCM(MSMAL)和地表土地的分类(CSML)。新引入了从ZY-3立体图像获得的光谱带和地形特征的均值和标准差滤波器。在本研究中,首次比较了三个MLA,包括它们对FS的敏感性以及FS是否导致重大影响。得出以下结论。纹理几乎没有用,新颖的功能有助于提高分类精度。关于FS的影响:FS大大减少了功能集(对于MSMAL减少了68%,对于CSML减少了87%),并且通常提高了分类准确性(使用三个MLA的MSMAL的平均值为4.48%,对于使用RF的CSML的平均值为11.39%和SVM);除基于ANN的MSMAL外,FS在统计上有显着改善; SVM对FS最敏感,其次是ANN和RF。关于MLA的比较:对于基于特征子集的MSMAL,RF达到了77.57%的最大总体准确度,其次是SVM和ANN。对于CSML,SVM的准确性最高(87.34%),其次是RF和ANN;基于特征子集,使用任何一对MLA观察到MSMAL和CSML的显着差异。通常,所提出的方法可以在复杂的露天开采和农业景观中促进LCM。

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