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Local directional ternary pattern: A New texture descriptor for texture classification.

Authors :
El khadiri, I.
Chahi, A.
El merabet, Y.
Ruichek, Y.
Touahni, R.
Source :
Computer Vision & Image Understanding; Apr2018, Vol. 169, p14-27, 14p
Publication Year :
2018

Abstract

In this paper, the three level descriptions from LTP and the directional features from LDP are combined to form a new local feature descriptor, referred to as local directional ternary pattern (LDTP) for texture classification. LDTP is a framework, which consists in encoding both contrast information and directional pattern features in a compact way based on local derivative variations. To achieve robustness, the proposed operator first computes for each pixel within its 3 × 3 overlapping grayscale image patch, on the one hand, eight directional edge responses using the eight Frei–Chen masks, and on the other hand, central edge response through the 2nd derivative of Gaussian filter to capture more detailed information. This allows producing a more discriminative encoding than several state-of-the art methods based only on intensity information. Then, spatial relationships among the neighboring pixels through the edge responses are exploited independently with the help of both LDP’s and LTP’s concepts to enhance the discrimination capability. Indeed, the implicit utilization of both concepts of LTP and LDP encodes more information in comparison to the existing directional and derivative methods in less space, and simultaneously allows discriminating more textures. Finally, the resultant LDTP pattern is divided into two distinct parts: local directional ternary pattern upper ( LDTP U ) and local directional ternary pattern lower ( LDTP L ), and the final feature descriptor vector is obtained by linear concatenation of both LDTP U and LDTP L histograms. The experiments carried out on nine publicly available texture datasets demonstrated that the proposed LDTP descriptor achieves classification performance, which is competitive or better than several recent and old state-of-the-art LBP variants. Statistical significance of the achieved accuracy improvement by the proposed descriptor has been also demonstrated through the Wilcoxon signed rank test applied on all the tested datasets. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
10773142
Volume :
169
Database :
Supplemental Index
Journal :
Computer Vision & Image Understanding
Publication Type :
Academic Journal
Accession number :
128982757
Full Text :
https://doi.org/10.1016/j.cviu.2018.01.004