IEEE Access (Jan 2020)

Completed Extremely Nonnegative DMD for Color Texture Classification

  • Mingxin Jin,
  • Yongsheng Dong,
  • Mingchuan Zhang,
  • Qingtao Wu,
  • Lintao Zheng,
  • Bin Song,
  • Lei Zhang,
  • Lin Wang

DOI
https://doi.org/10.1109/ACCESS.2020.2998926
Journal volume & issue
Vol. 8
pp. 103034 – 103046

Abstract

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Dense micro-block difference (DMD) has achieved good performance in gray texture representation and classification. However, its performance is not satisfactory when representing color texture. To alleviate this problem, we propose a novel color texture representation method based on Completed Extremely Nonnegative DMD (CEN-DMD) in this paper. In particular, we first use DMD to model interchannel features and interchannel features of color texture images. Considering that negative value is meaningless in a digital image, we perform a nonnegative operation during the difference process. Due to that the maximum value in a nonnegative difference patch represents a significant difference, we construct the Extremely Nonnegative DMD (EN-DMD) by fusing the maximum values of the intrachannel features and the maximum of interchannel features, and further build Completed Extremely Nonnegative DMD (CEN-DMD) by fusing EN-DMDs at five scales and the global feature of the color texture images. Finally, the Fisher Vector is used to encode the CEN-DMD to obtain a color texture descriptor. Experimental results on five published standard color texture datasets (CUReT, Colored Brodatz, VisTex, USPTex and KTH-TIPS) reveal that CEN-DMD is effective when compared to the thirteen representative color texture classification methods.

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