• DocumentCode
    1049128
  • Title

    Choosing Parameters of Kernel Subspace LDA for Recognition of Face Images Under Pose and Illumination Variations

  • Author

    Huang, Jian ; Yuen, Pong C. ; Chen, Wen-Sheng ; Lai, Jian Huang

  • Author_Institution
    Hong Kong Baptist Univ., Kowloon
  • Volume
    37
  • Issue
    4
  • fYear
    2007
  • Firstpage
    847
  • Lastpage
    862
  • Abstract
    This paper addresses the problem of automatically tuning multiple kernel parameters for the kernel-based linear discriminant analysis (LDA) method. The kernel approach has been proposed to solve face recognition problems under complex distribution by mapping the input space to a high-dimensional feature space. Some recognition algorithms such as the kernel principal components analysis, kernel Fisher discriminant, generalized discriminant analysis, and kernel direct LDA have been developed in the last five years. The experimental results show that the kernel-based method is a good and feasible approach to tackle the pose and illumination variations. One of the crucial factors in the kernel approach is the selection of kernel parameters, which highly affects the generalization capability and stability of the kernel-based learning methods. In view of this, we propose an eigenvalue-stability-bounded margin maximization (ESBMM) algorithm to automatically tune the multiple parameters of the Gaussian radial basis function kernel for the kernel subspace LDA (KSLDA) method, which is developed based on our previously developed subspace LDA method. The ESBMM algorithm improves the generalization capability of the kernel-based LDA method by maximizing the margin maximization criterion while maintaining the eigenvalue stability of the kernel-based LDA method. An in-depth investigation on the generalization performance on pose and illumination dimensions is performed using the YaleB and CMU PIE databases. The FERET database is also used for benchmark evaluation. Compared with the existing PCA-based and LDA-based methods, our proposed KSLDA method, with the ESBMM kernel parameter estimation algorithm, gives superior performance.
  • Keywords
    eigenvalues and eigenfunctions; face recognition; parameter estimation; principal component analysis; CMU PIE databases; FERET database; Gaussian radial basis function kernel; YaleB; eigenvalue stability; eigenvalue-stability-bounded margin maximization; face image recognition; generalization capability; generalized discriminant analysis; high-dimensional feature space; illumination variations; kernel Fisher discriminant; kernel parameter estimation; kernel principal component analysis; kernel subspace LDA; kernel-based LDA method; kernel-based learning methods; kernel-based linear discriminant analysis; margin maximization criterion; multiple kernel parameter tuning; pose variations; Algorithm design and analysis; Databases; Face recognition; Image recognition; Kernel; Learning systems; Lighting; Linear discriminant analysis; Principal component analysis; Stability; Gaussian radial basis function (RBF) kernel; generalization capability; kernel Fisher discriminant (KFD); kernel parameter; model selection; Algorithms; Artificial Intelligence; Biometry; Computer Simulation; Discriminant Analysis; Face; Humans; Image Interpretation, Computer-Assisted; Lighting; Pattern Recognition, Automated; Posture;
  • fLanguage
    English
  • Journal_Title
    Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1083-4419
  • Type

    jour

  • DOI
    10.1109/TSMCB.2007.895328
  • Filename
    4267863