Unsupervised Local Binary Pattern Histogram Selection Scores for Color Texture Classification release_ekpoaj5mynhzdgjhph7htzed6i

by Mariam Kalakech, Alice Porebski, Nicolas Vandenbroucke, Denis Hamad

Published in Journal of Imaging by MDPI AG.

2018   Issue 10, p112

Abstract

These last few years, several supervised scores have been proposed in the literature to select histograms. Applied to color texture classification problems, these scores have improved the accuracy by selecting the most discriminant histograms among a set of available ones computed from a color image. In this paper, two new scores are proposed to select histograms: The adapted Variance score and the adapted Laplacian score. These new scores are computed without considering the class label of the images, contrary to what is done until now. Experiments, achieved on OuTex, USPTex, and BarkTex sets, show that these unsupervised scores give as good results as the supervised ones for LBP histogram selection.
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