Journal Article10.5566/ias.2824
A Completed Multiply Threshold Encoding Pattern for Texture Classification
Bin Li,Yibing Li,Q. Wu +2 more
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TL;DR: A multiply threshold center pattern (MTCP) is designed to provide a more discriminative and complementary local texture representation with a compact form and achieves superior texture classification performance.
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Abstract: The binary pattern family has drawn wide attention for texture representation due to its promising performance and simple operation. However, most binary pattern methods focus on local neighborhoods but ignore center pixels. Even if some studies introduce the center based sub-pattern to provide complementary information, extant center based sub-patterns are much weaker than other local neighborhood based sub-patterns. This severe unbalance limits the classification performance of fusion features significantly. To alleviate this problem, this paper designs a multiply threshold center pattern (MTCP) to provide a more discriminative and complementary local texture representation with a compact form. First, a multiply thresholds encoding strategy is designed to encode the center pixel that generates three 1-bit binary patterns. Second, it adopts a compact multi-pattern encoding strategy to combine them into the 3-bit MTCP. Furthermore, this paper proposes a completed multiply threshold encoding pattern by fusing the MTCP, local sign pattern, and local magnitude pattern. Comprehensive experimental evaluations on three popular texture classification benchmarks confirm that the completed multiply threshold encoding pattern achieves superior texture classification performance.
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Citations
A Completed Gaussian Extended Binary Pattern for Texture Image Classification
Xiaochun Xu,Weizheng Lin,Dingrong Chen,Nanling Su,Leinuo Tang,Changxu Cai +5 more
- 08 Dec 2023
TL;DR: A completed Gaussian extended binary pattern is proposed for texture image classification, which achieves state-of-the-art performance.
References
Multiresolution gray-scale and rotation invariant texture classification with local binary patterns
TL;DR: A generalized gray-scale and rotation invariant operator presentation that allows for detecting the "uniform" patterns for any quantization of the angular space and for any spatial resolution and presents a method for combining multiple operators for multiresolution analysis.
Enhanced Local Texture Feature Sets for Face Recognition Under Difficult Lighting Conditions
Xiaoyang Tan,Bill Triggs +1 more
TL;DR: This work presents a simple and efficient preprocessing chain that eliminates most of the effects of changing illumination while still preserving the essential appearance details that are needed for recognition, and improves robustness by adding Kernel principal component analysis (PCA) feature extraction and incorporating rich local appearance cues from two complementary sources.
A Completed Modeling of Local Binary Pattern Operator for Texture Classification
TL;DR: It is shown that CLBP_S preserves more information of the local structure thanCLBP_M, which explains why the simple LBP operator can extract the texture features reasonably well and can be made for rotation invariant texture classification.
Reflectance and texture of real-world surfaces
TL;DR: A new texture representation called the BTF (bidirectional texture function) which captures the variation in texture with illumination and viewing direction is discussed, and a BTF database with image textures from over 60 different samples, each observed with over 200 different combinations of viewing and illumination directions is presented.
Outex - new framework for empirical evaluation of texture analysis algorithms
Timo Ojala,Topi Mäenpää,Matti Pietikäinen,J. Viertola,J. Kyllonen,S. Huovinen +5 more
- 11 Aug 2002
TL;DR: The proposed Outex framework contains a large collection of surface textures captured under different conditions, which facilitates construction of a wide range of texture analysis problems.
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