Land cover classification in mining areas using Beijing-1 small satellite data

Linshan Yuan, Peijun Du, Guang-Ting Li, Huapeng Zhang
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引用次数: 3

Abstract

Land cover classification is conducted using the panchromatic and multi-spectral data of Beijing-1 small satellite data in the western part of Xuzhou coal mining area. Firstly, fusion images obtained from different pixel fusion methods are used to land cover classification using SVM classifier. Secondly, feature level fusion is implemented by extracting texture information from panchromatic data and NDVI from multi-spectral data, by which texture and spectral features form new vectors to SVM classifier. Finally, Decision level fusion is experimented by adopting Dempster-Shafer evidence theory for classifier combination. The experimental results show that the fusion of panchromatic and multi-spectral data of Beijing-1 small satellite is effective to land cover classification, and the decision level fusion algorithm outperforms other methods in terms of classification accuracy.
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基于北京一号小卫星数据的矿区土地覆盖分类
利用北京一号小卫星数据的全色和多光谱数据对徐州矿区西部地区进行了土地覆盖分类。首先,利用不同像素融合方法得到的融合图像,利用SVM分类器进行土地覆盖分类;其次,从全色数据中提取纹理信息,从多光谱数据中提取NDVI信息,实现特征级融合,纹理和光谱特征形成新的向量用于SVM分类器;最后,采用Dempster-Shafer证据理论对分类器组合进行决策级融合实验。实验结果表明,北京一号小卫星全色与多光谱数据融合对土地覆盖分类是有效的,决策级融合算法在分类精度上优于其他方法。
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