Face recognition using a kernel fractional-step discriminant analysis algorithm
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摘要
Feature extraction is among the most important problems in face recognition systems. In this paper, we propose an enhanced kernel discriminant analysis (KDA) algorithm called kernel fractional-step discriminant analysis (KFDA) for nonlinear feature extraction and dimensionality reduction. Not only can this new algorithm, like other kernel methods, deal with nonlinearity required for many face recognition tasks, it can also outperform traditional KDA algorithms in resisting the adverse effects due to outlier classes. Moreover, to further strengthen the overall performance of KDA algorithms for face recognition, we propose two new kernel functions: cosine fractional-power polynomial kernel and non-normal Gaussian RBF kernel. We perform extensive comparative studies based on the YaleB and FERET face databases. Experimental results show that our KFDA algorithm outperforms traditional kernel principal component analysis (KPCA) and KDA algorithms. Moreover, further improvement can be obtained when the two new kernel functions are used.
论文关键词:Face recognition,Feature extraction,Nonlinear dimensionality reduction,Kernel discriminant analysis,Kernel fractional-step discriminant analysis
论文评审过程:Received 22 December 2005, Revised 18 May 2006, Accepted 22 June 2006, Available online 21 August 2006.
论文官网地址:https://doi.org/10.1016/j.patcog.2006.06.030