Integrating Discriminant and Descriptive Information for Dimension Reduction and Classification

In this paper, a novel hybrid dimension reduction technique for classification is proposed based on the hybrid analysis of principal component analysis (PCA) and linear discriminant analysis (LDA). LDA is known for capturing the most discriminant features of the data in the projected space while PCA is known for preserving the most descriptive ones after projection. Our hybrid technique integrates discriminant and descriptive information and finds a richer set of alternatives beyond LDA and PCA in a 2-D parametric space, which fits a specific classification task and data distribution better. Theoretical study shows that our technique also alleviates the singularity problem of scatter matrix, which is caused by small training set, and increases the effective dimension of the projected subspace. In order to find the hybrid features adaptively and avoid exhaustive parameter searching, we further propose a boosted hybrid analysis method that incorporates a nonlinear boosting process to enhance a set of hybrid classifiers and combine them into a more accurate one. Compared with the other techniques that aim at combining PCA and LDA, our approaches are novel because our method finds alternatives to LDA and PCA in a 2-D parameter space and the boosting process provides enhancement and robust combination of the classifiers. Extensive experiments are conducted on benchmark and real image databases to compare our proposed methods with the state-of-the-art linear and nonlinear discriminant analysis techniques. The results show the superior performance of our hybrid analysis methods

[1]  R. Gutierrez-Osuna,et al.  Principal discriminants analysis for small-sample-size problems: application to chemical sensing , 2004, Proceedings of IEEE Sensors, 2004..

[2]  Yang Tao,et al.  Integrated PCA-FLD method for hyperspectral imagery feature extraction and band selection , 2006, 3rd IEEE International Symposium on Biomedical Imaging: Nano to Macro, 2006..

[3]  David G. Stork,et al.  Pattern Classification (2nd ed.) , 1999 .

[4]  Yoav Freund,et al.  A Short Introduction to Boosting , 1999 .

[5]  Hong Z. Tan,et al.  Template-based Recognition of Static Sitting Postures , 2003, 2003 Conference on Computer Vision and Pattern Recognition Workshop.

[6]  Sanja Fidler,et al.  Robust LDA Classification by Subsampling , 2003, 2003 Conference on Computer Vision and Pattern Recognition Workshop.

[7]  Paul A. Viola,et al.  Rapid object detection using a boosted cascade of simple features , 2001, Proceedings of the 2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. CVPR 2001.

[8]  J. Friedman Regularized Discriminant Analysis , 1989 .

[9]  R. Fisher THE STATISTICAL UTILIZATION OF MULTIPLE MEASUREMENTS , 1938 .

[10]  Andy Harter,et al.  Parameterisation of a stochastic model for human face identification , 1994, Proceedings of 1994 IEEE Workshop on Applications of Computer Vision.

[11]  Hua Yu,et al.  A direct LDA algorithm for high-dimensional data - with application to face recognition , 2001, Pattern Recognit..

[12]  Vladimir N. Vapnik,et al.  The Nature of Statistical Learning Theory , 2000, Statistics for Engineering and Information Science.

[13]  Eric R. Ziegel,et al.  Statistical Methods in Bioinformatics , 2002, Technometrics.

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

[15]  Qi Tian,et al.  Self-supervised learning based on discriminative nonlinear features for image classification , 2005, Pattern Recognit..

[16]  Qi Tian,et al.  Parameterized discriminant analysis for image classification , 2004, 2004 IEEE International Conference on Multimedia and Expo (ICME) (IEEE Cat. No.04TH8763).

[17]  P. N. Bellhumer Eigenfaces vs. fisherfaces : Recognition using class specific linear projection , 1997 .

[18]  Thomas S. Huang,et al.  Small sample learning during multimedia retrieval using BiasMap , 2001, Proceedings of the 2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. CVPR 2001.

[19]  Jieping Ye,et al.  Null space versus orthogonal linear discriminant analysis , 2006, ICML '06.

[20]  Gregory R. Grant,et al.  Statistical Methods in Bioinformatics , 2001 .

[21]  David Casasent,et al.  GENERAL METHODOLOGY FOR SIMULTANEOUS REPRESENTATION AND DISCRIMINATION OF MULTIPLE OBJECT CLASSES , 1998 .

[22]  Bruce A. Draper,et al.  A nonparametric statistical comparison of principal component and linear discriminant subspaces for face recognition , 2001, Proceedings of the 2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. CVPR 2001.

[23]  Xiaogang Wang,et al.  Dual-space linear discriminant analysis for face recognition , 2004, Proceedings of the 2004 IEEE Computer Society Conference on Computer Vision and Pattern Recognition, 2004. CVPR 2004..

[24]  R. Fisher THE USE OF MULTIPLE MEASUREMENTS IN TAXONOMIC PROBLEMS , 1936 .

[25]  Yi Ma,et al.  Minimum effective dimension for mixtures of subspaces: a robust GPCA algorithm and its applications , 2004, CVPR 2004.

[26]  Sun-Yuan Kung,et al.  Principal Component Neural Networks: Theory and Applications , 1996 .

[27]  Marcel Worring,et al.  Content-Based Image Retrieval at the End of the Early Years , 2000, IEEE Trans. Pattern Anal. Mach. Intell..

[28]  Vladimir N. Vapnik,et al.  The Nature of Statistical Learning Theory, Second Edition , 2000, Statistics for Engineering and Information Science.

[29]  Rama Chellappa,et al.  Discriminant Analysis for Recognition of Human Face Images (Invited Paper) , 1997, AVBPA.

[30]  Juyang Weng,et al.  Hierarchical Discriminant Analysis for Image Retrieval , 1999, IEEE Trans. Pattern Anal. Mach. Intell..

[31]  Avinash C. Kak,et al.  PCA versus LDA , 2001, IEEE Trans. Pattern Anal. Mach. Intell..

[32]  Takeo Kanade,et al.  Neural Network-Based Face Detection , 1998, IEEE Trans. Pattern Anal. Mach. Intell..

[33]  Qi Tian,et al.  Discriminant-EM algorithm with application to image retrieval , 2000, Proceedings IEEE Conference on Computer Vision and Pattern Recognition. CVPR 2000 (Cat. No.PR00662).

[34]  Alan M. Lefcourt,et al.  A novel integrated PCA and FLD method on hyperspectral image feature extraction for cucumber chilling damage inspection , 2004 .