4.7 Article

Adaptive center pixel selection strategy in Local Binary Pattern for texture classification

期刊

EXPERT SYSTEMS WITH APPLICATIONS
卷 180, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2021.115123

关键词

Local Binary Pattern (LBP); Center pixel; Adaptive center pixel selection (ACPS) strategy; Super resolution; Texture classification

资金

  1. National Key Laboratory Foundation of China [HTKJ2020KL504015]
  2. National Science Foundation of China [U1903213]
  3. Zhejiang Provincial Natural Science Foundation of China [LQY19F010001, LGF21F030002]

向作者/读者索取更多资源

This study introduces a novel adaptive center pixel selection (ACPS) strategy to improve the robustness and discrimination capability of Local Binary Pattern(LBP) in texture classification. By applying interpolation method and edge detection, ACPS helps recover lost texture information and accurately extract complicated texture microstructures, leading to significantly improved texture classification performance on various texture databases.
Local Binary Pattern (LBP) is widely used in texture classification because of its powerful capability to extract texture features of a center pixel. However, LBP has three main drawbacks: (1) limited by the low resolution of imaging device, the quality of texture image is degraded, and some real existing pixels with more texture information are unavoidably lost. (2) Center pixel gc is the most important factor to extract correct LBP pattern. However, by far LBP and its variants do not show any solutions to enhance the robustness of center pixel gc. (3) Some LBP patterns include important texture microstructures, but they are ignored by uniform patterns. At the same time, some uniform patterns can be corrupted by noise and misclassified into non-uniform patterns. These LBP patterns therefore all lost their discrimination capability. In order to overcome these three disadvantages, in this paper, we propose a novel adaptive center pixel selection (ACPS) strategy. Inspired by image super-resolution techniques, ACPS firstly applies the interpolation method to recover the lost real existing pixels and generate the center pixel candidates with more texture information. Then, the gradient information is used to obtain the edge image aiming to find the non-uniform patterns at edge points which may contain complicated texture microstructures. After generating the center pixel candidates and edge image, we introduce ACPS strategy into the LBP framework. By adaptively selecting the optimal center pixel from all center pixel candidates, one non-uniform pattern at the edge point can be possibly recovered to the uniform pattern, and regain its discrimination power. It is worth noting that any other LBP variants can also employ the ACPS strategy to more effectively extract its texture features. By observing the experimental results on representative texture databases of Outex, UIUC, CUReT, XU_HR, ALOT and KTHTIPS2b after introducing the ACPS strategy into LBP and its variants of LTP, CLBP, BRINT, CRDP, FbLBP, and CJLBP, the texture classification performances can be significantly improved.

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