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Texture classification using the support vector machines
Authors:Shutao  James T  Hailong and Yaonan
Affiliation:

a Department of Computer Science, Hong Kong University of Science and Technology, Clear Water Bay, Hong Kong

b College of Electrical and Information Engineering, Hunan University, Changsha, People's Republic of China

c GE Global Research, GE China Technology Center Co., Ltd., Shanghai, People's Republic of China

Abstract:In recent years, support vector machines (SVMs) have demonstrated excellent performance in a variety of pattern recognition problems. In this paper, we apply SVMs for texture classification, using translation-invariant features generated from the discrete wavelet frame transform. To alleviate the problem of selecting the right kernel parameter in the SVM, we use a fusion scheme based on multiple SVMs, each with a different setting of the kernel parameter. Compared to the traditional Bayes classifier and the learning vector quantization algorithm, SVMs, and, in particular, the fused output from multiple SVMs, produce more accurate classification results on the Brodatz texture album.
Keywords:Texture classification  Support vector machines  Discrete wavelet frame transform
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