Review the strength of Gabor features for face recognition from the angle of its robustness to mis-alignment

ICPR '04 Proceedings of the Pattern Recognition, 17th International Conference on (ICPR'04) Volume 1 - Volume 01(2004)

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摘要
Gabor feature has been widely recognized as better representation for face recognition in terms of rank-1 recognition rate. In this paper, we review the strength of Gabor feature for face recognition from the new angle of its robustness to mis-alignment using a novel quantificational evaluation method combining both the alignment precision and the recognition accuracy. Our experiments show that, compared with the gray-level intensity, Gabor feature is much more robust to image variation caused by the imprecision of facial feature localization, which further support the feasibility of Gabor representation.
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关键词
recognition accuracy,quantificational evaluation method,image representation,face recognition,gabor feature,gabor representation,misalignment problem,image variation,facial feature localization,feature extraction,gabor features,rank-1 recognition rate,gray level intensity,rank 1 recognition rate,alignment precision,gray-level intensity,better representation
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