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Pattern Recognition
Volume 25, Issue 3, March 1992, Pages 247-255
 
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doi:10.1016/0031-3203(92)90108-U    
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Copyright © 1992 Published by Elsevier Science B.V.

Unsupervised textural classification of images using the texture spectrum

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Dong-Chen He and Li Wang

Centre d'applications et de recherches en télédétection (CARTEL), Université de Sherbrooke, Sherbrooke, Québec, Canada J1K 2R1


Received 14 March 1991; 
revised 1 July 1991; 
accepted 16 July 1991. ;
Available online 19 May 2003.

Abstract

Pursuing our previous study (Wang and He, Pattern Recognition 23, 905–910 (1990)) where the texture spectrum was proposed for a supervised classification of texture images, an example is presented here of the application of the texture spectrum to an unsupervised textural classification of images. Promising results are obtained when using the algorithm to classify six of Brodatz's natural texture images, demonstrating further the discrimination performance of the texture spectrum.

Author Keywords: Texture analysis; Unsupervised classification; Texture spectrum; Pattern recognition Image processing; Scene analysis

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Pattern Recognition
Volume 25, Issue 3, March 1992, Pages 247-255
 
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