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Image classification with binary gradient contours
Authors:Antonio Fernández  Marcos X. Álvarez  Francesco Bianconi
Affiliation:1. Department of Engineering Design, Universidade de Vigo, Escola de Enxeñaría Industrial, Campus Universitario, 36310 Vigo, Spain;2. Department of Industrial Engineering, Università degli Study di Perugia, Via G. Duranti 67, 06125 Perugia, Italy
Abstract:In this work we present a new family of computationally simple texture descriptors, referred to as binary gradient contours (BGC). The BGC methodology relies on computing a set of eight binary gradients between pairs of pixels all along a closed path around the central pixel of a 3×3 grayscale image patch. We developed three different versions of BGC features, namely single-loop, double-loop and triple-loop. To quantitatively assess the effectiveness of the proposed approach we performed an ensemble of texture classification experiments over 10 different datasets. The obtained results make it apparent that the single-loop version is the best performer of the BGC family. Experiments also show that the single-loop BGC texture operator outperforms the well-known LBP. Statistical significance of the achieved accuracy improvement has been demonstrated through the Wilkoxon signed rank test.
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