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Land Cover Classification by using of Multi-source Remote Sensing Image based on ELM

机译:基于ELM的多源遥感影像土地覆盖分类

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High-precision land cover classification can provide a reliable reference for urban and resource development. Remote sensing images are accessible, precise and provide wide coverage, and are thus widely used in land cover classification research. Based on Extreme Learning Machine(ELM), land cover classification was carried out for the Xinmiao bubble and its vicinity in Songyuan City, Jilin, China using single Sentinel-1A image, single GF-2 image and their combined image. The results show that Sentinel-1A image has high sensitivity to saline-alkali land in the study area. The combined image of Sentinel-1A and GF-2 had a better classification result when compared to a single remote sensing image, and the extraction ability of woodland and saline-alkali land was stronger. The overall classification accuracy was 84.27% , and the Kappa coefficient was 0.7865. Futhermore, the combined image of Sentinel-1A and GF-2 was classified using the Support Vector Machine(SVM) and Mahalanobis distance algorithm separately, the classification accuracies were lower than that of ELM. Land cover classification based on ELM for multi-source combined remote sensing image clearly improved classification accuracy providing a practical alternative to current processes.
机译:高精度的土地覆被分类可以为城市和资源开发提供可靠的参考。遥感图像易于获取,精确且覆盖面广,因此被广泛用于土地覆盖分类研究。基于极限学习机(ELM),利用单幅Sentinel-1A图像,单幅GF-2图像及其组合图像对吉林省松原市新庙泡沫及其附近地区进行了土地覆盖分类。结果表明,Sentinel-1A图像对研究区的盐碱地具有较高的敏感性。与单个遥感图像相比,Sentinel-1A和GF-2的组合图像具有更好的分类效果,林地和盐碱地的提取能力更强。总体分类准确度为84.27%,Kappa系数为0.7865。此外,使用支持向量机和马氏距离算法分别对Sentinel-1A和GF-2的组合图像进行分类,分类精度低于ELM。基于ELM的多源组合遥感图像土地覆盖分类明显提高了分类精度,为当前流程提供了一种实用的替代方法。

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