DocumentCode
75949
Title
Pairwise Rotation Invariant Co-Occurrence Local Binary Pattern
Author
Xianbiao Qi ; Rong Xiao ; Chun-Guang Li ; Yu Qiao ; Jun Guo ; Xiaoou Tang
Author_Institution
Sch. of Inf. & Commun. Eng., Beijing Univ. of Posts & Telecommun., Beijing, China
Volume
36
Issue
11
fYear
2014
fDate
Nov. 1 2014
Firstpage
2199
Lastpage
2213
Abstract
Designing effective features is a fundamental problem in computer vision. However, it is usually difficult to achieve a great tradeoff between discriminative power and robustness. Previous works shown that spatial co-occurrence can boost the discriminative power of features. However the current existing co-occurrence features are taking few considerations to the robustness and hence suffering from sensitivity to geometric and photometric variations. In this work, we study the Transform Invariance (TI) of co-occurrence features. Concretely we formally introduce a Pairwise Transform Invariance (PTI) principle, and then propose a novel Pairwise Rotation Invariant Co-occurrence Local Binary Pattern (PRICoLBP) feature, and further extend it to incorporate multi-scale, multi-orientation, and multi-channel information. Different from other LBP variants, PRICoLBP can not only capture the spatial context co-occurrence information effectively, but also possess rotation invariance. We evaluate PRICoLBP comprehensively on nine benchmark data sets from five different perspectives, e.g., encoding strategy, rotation invariance, the number of templates, speed, and discriminative power compared to other LBP variants. Furthermore we apply PRICoLBP to six different but related applications-texture, material, flower, leaf, food, and scene classification, and demonstrate that PRICoLBP is efficient, effective, and of a well-balanced tradeoff between the discriminative power and robustness.
Keywords
computer vision; feature extraction; transforms; PRICoLBP feature; PTI principle; computer vision; pairwise rotation invariant co-occurrence local binary pattern; pairwise transform invariance principle; spatial co-occurrence; Encoding; Feature extraction; Histograms; Image color analysis; Lighting; Robustness; Transforms; Co-occurrence LBPs; flower recognition; food recognition; leaf recognition; material recognition; rotation invariance; scene recognition; texture classification;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2014.2316826
Filename
6787082
Link To Document