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Multi-Feature Classification Approach for High Spatial Resolution Hyperspectral Images
Authors:Yumin Tan  Wei Xia  Bo Xu  Linjie Bai
Institution:1.Department of Civil Engineering,Beihang University,Beijing,China;2.Institute of Remote Sensing and Digital Earth,Chinese Academy of Sciences,Beijing,China;3.Department of Geography and Environmental Studies,California State University San Bernardino,San Bernardino,USA;4.State Grid Corporation of China,Shijiazhuang,China
Abstract:High spatial resolution hyperspectral images not only contain abundant radiant and spectral information, but also display rich spatial information. In this paper, we propose a multi-feature high spatial resolution hyperspectral image classification approach based on the combination of spectral information and spatial information. Three features are derived from the original high spatial resolution hyperspectral image: the spectral features that are acquired from the auto subspace partition technique and the band index technique; the texture features that are obtained from GLCM analysis of the first principal component after principal component analysis is performed on the original image; and the spatial autocorrelation features that contain spatial band X and spatial band Y, with the grey level of spatial band X changing along columns and the grey level of spatial band Y changing along rows. The three features are subsequently combined together in Support Vector Machine to classify the high spatial resolution hyperspectral image. The experiments with a high spatial resolution hyperspectral image prove that the proposed multi-feature classification approach significantly increases classification accuracies.
Keywords:
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