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2D clustering based discriminant analysis for 3D head model classification
Authors:Bo Ma  Hau-San Wong
Affiliation:Department of Computer Science, City University of Hong Kong, Hong Kong
Abstract:This paper introduces a novel framework for 3D head model recognition based on the recently proposed 2D subspace analysis method. Two main contributions have been made. First, a 2D version of clustering-based discriminant analysis (CDA) is proposed, which combines the capability to model the multiple cluster structure embedded within a single class with the computational advantage that is characteristic of 2D subspace analysis methods. Second, we extend the applications of 2D subspace methods to the field of 3D head model classification by characterizing these models with 2D feature sets.
Keywords:2D subspace analysis   2D Fisher discriminant analysis   2D clustering-based discriminant analysis   3D head model classification   Extended Gaussian image
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