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A novel class-dependence feature analysis method for face recognition

✍ Scribed by Yan Yan; Yu-Jin Zhang


Publisher
Elsevier Science
Year
2008
Tongue
English
Weight
568 KB
Volume
29
Category
Article
ISSN
0167-8655

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✦ Synopsis


This paper develops a novel Class-dependence Feature Analysis (CFA) method for robust face recognition. A new correlation filter called Optimal Origin Correlation output Tradeoff Filter (OOCTF) is designed in the two-dimensional (2-D) feature space obtained by Second-order Tensor Subspace Analysis (STSA). Designing correlation filters in the 2-D feature space makes them more tolerant to distortions in illumination and facial expression etc. Moreover, by focusing on the correlation outputs at the origin, OOCTF is very effective for feature vector extraction. Experimental results on three benchmark face databases show the superiority of the proposed method over traditional face recognition methods.


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