Visual object recognition using probabilistic kernel subspace similarity

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Probabilistic subspace similarity-based face matching is an efficient face recognition algorithm proposed by Moghaddam et al. It makes one basic assumption: the intra-class face image set spans a linear space. However, there are yet no rational geometric interpretations of the similarity under that assumption. This paper investigates two subjects. First, we present one interpretation of the intra-class linear subspace assumption from the perspective of manifold analysis, and thus discover the geometric nature of the similarity. Second, we also note that the linear subspace assumption does not hold in some cases, and generalize it to nonlinear cases by introducing kernel tricks. The proposed model is named probabilistic kernel subspace similarity (PKSS). Experiments on synthetic data and real visual object recognition tasks show that PKSS can achieve promising performance, and outperform many other current popular object recognition algorithms.

论文关键词:Subspace analysis,Tangent distance,Kernel methods,Visual object recognition,Manifold analysis

论文评审过程:Received 6 April 2004, Revised 10 January 2005, Accepted 10 January 2005, Available online 11 March 2005.

论文官网地址:https://doi.org/10.1016/j.patcog.2005.01.007