Texture classification plays a major role in many computer vision applications. Local binary patterns (LBP) encoding schemes have largely been proven to be very effective for this task. Improved LBP (ILBP) are conceptually simple, easy to implement, and highly effective LBP variants based on a point-to-average thresholding scheme instead of a point-to-point one. We propose the use of this encoding scheme for extracting intra- and interchannel features for color texture classification. We experimentally evaluated the resulting improved opponent color LBP alone and in concatenation with the ILBP of the local color contrast map on a set of image classification tasks over 9 datasets of generic color textures and 11 datasets of biomedical textures. The proposed approach outperformed other grayscale and color LBP variants in nearly all the datasets considered and proved competitive even against image features from last generation convolutional neural networks, particularly for the classification of biomedical images.

Bianconi, F., Bello-Cerezo, R., Napoletano, P. (2018). Improved opponent color local binary patterns: An effective local image descriptor for color texture classification. JOURNAL OF ELECTRONIC IMAGING, 27(1), 1-10 [10.1117/1.JEI.27.1.011002].

Improved opponent color local binary patterns: An effective local image descriptor for color texture classification

Napoletano, P
2018

Abstract

Texture classification plays a major role in many computer vision applications. Local binary patterns (LBP) encoding schemes have largely been proven to be very effective for this task. Improved LBP (ILBP) are conceptually simple, easy to implement, and highly effective LBP variants based on a point-to-average thresholding scheme instead of a point-to-point one. We propose the use of this encoding scheme for extracting intra- and interchannel features for color texture classification. We experimentally evaluated the resulting improved opponent color LBP alone and in concatenation with the ILBP of the local color contrast map on a set of image classification tasks over 9 datasets of generic color textures and 11 datasets of biomedical textures. The proposed approach outperformed other grayscale and color LBP variants in nearly all the datasets considered and proved competitive even against image features from last generation convolutional neural networks, particularly for the classification of biomedical images.
Articolo in rivista - Articolo scientifico
Color texture; Convolutional neural networks; Image classification; Local binary patterns;
Color texture; Convolutional neural networks; Image classification; Local binary patterns; Atomic and Molecular Physics, and Optics; Computer Science Applications1707 Computer Vision and Pattern Recognition; Electrical and Electronic Engineering
English
2018
27
1
1
10
011002
reserved
Bianconi, F., Bello-Cerezo, R., Napoletano, P. (2018). Improved opponent color local binary patterns: An effective local image descriptor for color texture classification. JOURNAL OF ELECTRONIC IMAGING, 27(1), 1-10 [10.1117/1.JEI.27.1.011002].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/183687
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