Recognizing faces using Adaptively Weighted Sub-Gabor Array from a single sample image per enrolled subject

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摘要

In this paper, we propose a new approach for face representation and recognition based on Adaptively Weighted Sub-Gabor Array (AWSGA) when only one sample image per enrolled subject is available. Instead of using holistic representation of face images which is not effective under different facial expressions and partial occlusions, the proposed algorithm utilizes a local Gabor array to represent faces partitioned into sub-patterns. Especially, in order to perform matching in the sense of the richness of identity information rather than the size of a local area and to handle the partial occlusion problem, the proposed method employs an adaptively weighting scheme to weight the Sub-Gabor features extracted from local areas based on the importance of the information they contain and their similarities to the corresponding local areas in the general face image. An extensive experimental investigation is conducted using AR and Yale face databases covering face recognition under controlled/ideal condition, different illumination condition, different facial expression and partial occlusion. The system performance is compared with the performance of four benchmark approaches. The promising experimental results indicate that the proposed method can greatly improve the recognition rates under different conditions.

论文关键词:Face recognition,Gabor Wavelet,Adaptively Weighted Sub-Gabor Array,Partial occlusion,Single model database

论文评审过程:Received 21 April 2008, Revised 16 March 2009, Accepted 16 June 2009, Available online 26 June 2009.

论文官网地址:https://doi.org/10.1016/j.imavis.2009.06.013