4.6 Article

Weighted Constraint Feature Selection of Local Descriptor for Texture Image Classification

Journal

IEEE ACCESS
Volume 11, Issue -, Pages 91673-91695

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2023.3306075

Keywords

Local binary pattern; weighted constraint feature selection; texture image classification

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This paper discusses several statistical descriptors for feature extraction from texture images, and introduces the local binary pattern as one of the most popular descriptors. A weighted constraint feature selection approach is proposed in this paper to select a small number of features without degrading the classification accuracy, which significantly improves the classification rate.
There are several statistical descriptors for feature extraction from texture images. Local binary pattern is one of the most popular descriptors for revealing the underlying structure of a texture. Recently several variants of local binary descriptors have been proposed. The completed local binary pattern is an efficient version that can provide discriminant features and consequently provide a high classification rate. It finely characterizes a texture by fusing three histograms of features. Fusing histograms is applied by jointing the histograms and it increases the feature number significantly; therefore, in this paper, a weighted constraint feature selection approach is proposed to select a very small number of features without any degradation in classification accuracy. It significantly enhances the classification rate by using a very low number of informative features. The proposed feature selection approach is a filter-based feature selection. It employed a weighted constraint score for each feature. After ranking the features, a threshold estimation method is proposed to select the most discriminant features. For a better comparison, a wide range of different datasets is used as a benchmark to assess the compared methods. Implementations on Outex, UIUC, CUReT, MeasTex, Brodatz, Virus, Coral Reef, and ORL face datasets indicate that the proposed method can provide high classification accuracy without any learning step just by selecting a few features of the descriptor.

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