Probabilistic two-dimensional principal component analysis and its mixture model for face recognition

Recently, two-dimensional principal component analysis (2DPCA) as a novel eigenvector-based method has proved to be an efficient technique for image feature extraction and representation. In this paper, by supposing a parametric Gaussian distribution over the image space (spanned by the row vectors of 2D image matrices) and a spherical Gaussian noise model for the image, we endow the 2DPCA with a probabilistic framework called probabilistic 2DPCA (P2DPCA), which is robust to noise. Further, by using the probabilistic perspective of P2DPCA, we extend the P2DPCA to a mixture of local P2DPCA models (MP2DPCA). The MP2DPCA offers us a method of being able to model faces in unconstrained (complex) environment. The model parameters could be fitted on the basis of maximum likelihood (ML) estimation via the expectation maximization (EM) algorithm. The experimental recognition results on UMIST, AR face database, and the face recognition (FR) data collected at University of Essex confirm the effectivity of the proposed methods.

[1]  Daoqiang Zhang,et al.  (2D)2PCA: Two-directional two-dimensional PCA for efficient face representation and recognition , 2005, Neurocomputing.

[2]  Haixian Wang,et al.  Face Recognition Using Probabilistic Two-Dimensional Principal Component Analysis and Its Mixture Model , 2006, ICNC.

[3]  Christopher M. Bishop,et al.  Mixtures of Probabilistic Principal Component Analyzers , 1999, Neural Computation.

[4]  G. McLachlan,et al.  The EM algorithm and extensions , 1996 .

[5]  I. Jolliffe Principal Component Analysis , 2002 .

[6]  Alejandro F. Frangi,et al.  Two-dimensional PCA: a new approach to appearance-based face representation and recognition , 2004 .

[7]  D. B. Graham,et al.  Characterising Virtual Eigensignatures for General Purpose Face Recognition , 1998 .

[8]  Michael E. Tipping,et al.  Mixtures of Principal Component Analysers , 1997 .

[9]  A. Martínez,et al.  The AR face databasae , 1998 .

[10]  David J. Kriegman,et al.  Eigenfaces vs. Fisherfaces: Recognition Using Class Specific Linear Projection , 1996, ECCV.

[11]  Azriel Rosenfeld,et al.  Face recognition: A literature survey , 2003, CSUR.

[12]  Liwei Wang,et al.  The equivalence of two-dimensional PCA to line-based PCA , 2005, Pattern Recognit. Lett..

[13]  M. Turk,et al.  Eigenfaces for Recognition , 1991, Journal of Cognitive Neuroscience.

[14]  Lei Wang,et al.  Generalized 2D principal component analysis for face image representation and recognition , 2005, Neural Networks.

[15]  P. Matsakis,et al.  The use of force histograms for affine-invariant relative position description , 2004 .

[16]  Aleix M. Martinez,et al.  The AR face database , 1998 .

[17]  D. B. Gerham Characterizing virtual eigensignatures for general purpose face recognition , 1998 .