Hyperspectral Image Classification Using Weighted Joint Collaborative Representation

IEEE Geosci. Remote Sensing Lett.(2015)

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摘要
Recently, representation-based classifiers have gained increasing interest in hyperspectral image (HSI) classification. In this letter, based on our previously developed joint collaborative representation (JCR) classifier, an improved version, which is called weighted JCR (WJCR) classifier, is proposed. JCR adopts the same weights when extracting spatial and spectral features from surrounding pixels. Differing from JCR, WJCR attempts to utilize more appropriate weights by considering the similarity between the center pixel and its surroundings. Experimental results using two real HSIs demon strate that the proposed WJCR outperforms the original JCR and some other traditional classifiers, such as the support vector machine (SVM), the SVM with a composite kernel, and simultaneous orthogonal matching pursuit.
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关键词
wjcr classifier,hyperspectral image (hsi) classification,nearest regularized subspace (nrs) classifier,spectral feature extraction,collaborative representation based classifier,hyperspectral image classification,weighted jcr classifier,operating system kernels,joint collaborative representation,composite kernel,spectral–spatial information,feature extraction,image classification,support vector machine,geophysical image processing,spectral???spatial information,hyperspectral imaging,representation-based classifiers,sparse representation based classifier,orthogonal matching pursuit,support vector machines,accuracy
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