Signature extraction using mutual interdependencies
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摘要
Recently, mutual interdependence analysis (MIA) has been successfully used to extract representations, or “mutual features”, accounting for samples in the class. For example, a mutual feature is a face signature under varying illumination conditions or a speaker signature under varying channel conditions. A mutual feature is a linear regression that is equally correlated with all samples of the input class. Previous work discussed two equivalent definitions of this problem and a generalization of its solution called generalized MIA (GMIA). Moreover, it showed how mutual features can be computed and employed. This paper uses a parametrized version GMIA(λ) to pursue a deeper understanding of what GMIA features really represent. It defines a generative signal model that is used to interpret GMIA(λ) and visualize its difference to MIA, principal and independent component analysis. Finally, we analyze the effect of λ on the feature extraction performance of GMIA(λ) in two standard pattern recognition problems: illumination-independent face recognition and text-independent speaker verification.
论文关键词:Algorithms,Signal processing,Pattern classification,Signal analysis,Speaker recognition,Face recognition
论文评审过程:Received 20 March 2009, Revised 25 August 2010, Accepted 18 September 2010, Available online 25 September 2010.
论文官网地址:https://doi.org/10.1016/j.patcog.2010.09.012