Subspace distance analysis with application to adaptive Bayesian algorithm for face recognition

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We propose subspace distance measures to analyze the similarity between intrapersonal face subspaces, which characterize the variations between face images of the same individual. We call the conventional intrapersonal subspace average intrapersonal subspace (AIS) because the image differences often come from a large number of persons. An intrapersonal subspace is referred to as specific intrapersonal subspace (SIS) if the image differences are from just one person. We demonstrate that SIS varies significantly from person to person, and most SISs are not similar to AIS. Based on these observations, we introduce the maximum a posteriori (MAP) adaptation to the problem of SIS estimation, and apply it to the Bayesian face recognition algorithm. Experimental results show that the adaptive Bayesian algorithm outperforms the non-adaptive Bayesian algorithm as well as Eigenface and Fisherface methods if a small number of adaptation images are available.

论文关键词:Face recognition,Intrapersonal subspace,Bayesian face recognition,Subspace distance,Maximum a posteriori adaptation

论文评审过程:Received 27 December 2004, Accepted 15 August 2005, Available online 15 November 2005.

论文官网地址:https://doi.org/10.1016/j.patcog.2005.08.015