基于Gabor Fisher分类器的人脸识别

Yu Su, S. Shan, Xilin Chen, Wen Gao
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引用次数: 21

摘要

Gabor特征被广泛认为是人脸识别的最佳表征之一。然而,传统上由于维数的诅咒,必须对其进行降维。本文提出了一种基于集成的Gabor Fisher分类器(EGFC)方法,该方法将多个基于Fisher判别分析(FDA)的成分分类器结合起来,利用整个Gabor特征的不同片段学习。由于整个Gabor特征的每个维度都被一个成分FDA分类器利用,我们认为EGFC通过避免降维过程更好地利用了所有Gabor特征中隐含的可判别性。此外,通过仔细控制每个特征段的尺寸,巧妙地避免了FDA通常面临的小样本量(3S)问题。在FERET上的实验结果表明,所提出的EGFC显著优于目前已知的最佳结果。在此基础上,提出了基于金字塔Gabor表示的分层EGFC (HEGFC)算法。我们的实验表明,采用分层方法可以显著降低HEGFC的时间成本,而不会损失太多的精度
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical ensemble of Gabor Fisher classifier for face recognition
Gabor feature has been widely recognized as one of the best representations for face recognition. However, traditionally, it has to be reduced in dimension due to curse of dimensionality. In this paper, an ensemble based Gabor Fisher classifier (EGFC) method is proposed, which is an ensemble classifier combining multiple Fisher discriminant analysis (FDA)-based component classifiers learnt using different segments of the entire Gabor feature. Since every dimension of the entire Gabor feature is exploited by one component FDA classifier, we argue that EGFC makes better use of the discriminability implied in all the Gabor features by avoiding the dimension reduction procedure. In addition, by carefully controlling the dimension of each feature segment, small sample size (3S) problem commonly confronting FDA is artfully avoided. Experimental results on FERET show that the proposed EGFC significantly outperforms the known best results so far. Furthermore, to speed up, hierarchical EGFC (HEGFC) is proposed based on pyramid-based Gabor representation. Our experiments show that, by using the hierarchical method, the time cost of the HEGFC can be dramatically reduced without much accuracy lost
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