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Dictionary-based,clustered sparse representation for hyperspectral image classification
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نویسنده
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qin z.-t. ,yang w.-n. ,yang r. ,zhao x.-y. ,yang t.-j.
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منبع
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journal of spectroscopy - 2015 - دوره : 2015 - شماره : 0
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چکیده
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This paper presents a new,dictionary-based method for hyperspectral image classification,which incorporates both spectral and contextual characteristics of a sample clustered to obtain a dictionary of each pixel. the resulting pixels display a common sparsity pattern in identical clustered groups. we calculated the image's sparse coefficients using the dictionary approach,which generated the sparse representation features of the remote sensing images. the sparse coefficients are then used to classify the hyperspectral images via a linear svm. experiments show that our proposed method of dictionary-based,clustered sparse coefficients can create better representations of hyperspectral images,with a greater overall accuracy and a kappa coefficient. © 2015 zhen-tao qin et al.
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آدرس
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key laboratory of geo-special information technology,institute of remote sensing and gis,chengdu university of technology,chengdu,sichuan,china,panzhihua college,panzhihua, China, key laboratory of geo-special information technology,institute of remote sensing and gis,chengdu university of technology,chengdu, China, panzhihua college,panzhihua, China, panzhihua college,panzhihua, China, panzhihua college,panzhihua, China
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Authors
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