Score Fusion of SVD and DCT-RLDA for Face Recognition

Although information fusion in unimodal or multimodal biometric systems can be performed at various levels, integration of the matching score level is the most common approach. Starting from the fact; that the fusion will be efficient if and only if the fused approaches are complementary not fully competitive. We propose in this paper the fusion of two projection based face recognition algorithms: singular value decomposition (SVD) using the left and right singular vectors of the face image as a face feature stored in a matrix and regularized Linear Discriminant Analysis in DCT domain (DCT-RLDA) which is known by its computational efficiency in addition to discrimination power. Experiments conducted on the ORL database indicate that the application of the Min-Max, Z-score score normalization schemes followed by a simple fusion strategies (simple sum, weighted sum, append) confirm the benefits of the proposed approach in terms of identification rate and processing time.

[1]  Gian Luca Marcialis,et al.  Fusion of LDA and PCA for Face Recognition , 2002 .

[2]  Konstantinos N. Plataniotis,et al.  Face recognition using LDA-based algorithms , 2003, IEEE Trans. Neural Networks.

[3]  Martin D. Levine,et al.  Face Recognition Using the Discrete Cosine Transform , 2001, International Journal of Computer Vision.

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

[5]  Tieniu Tan,et al.  Do singular values contain adequate information for face recognition? , 2003, Pattern Recognit..

[6]  Konstantinos N. Plataniotis,et al.  Regularized D-LDA for face recognition , 2003, 2003 IEEE International Conference on Acoustics, Speech, and Signal Processing, 2003. Proceedings. (ICASSP '03)..

[7]  Anil K. Jain,et al.  Large-scale evaluation of multimodal biometric authentication using state-of-the-art systems , 2005, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[8]  Chaur-Chin Chen,et al.  SVD-based projection for face recognition , 2007, 2007 IEEE International Conference on Electro/Information Technology.

[9]  Jian Yang,et al.  Two-dimensional PCA: a new approach to appearance-based face representation and recognition , 2004, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[10]  Ludmila I. Kuncheva,et al.  Relationships between combination methods and measures of diversity in combining classifiers , 2002, Inf. Fusion.

[11]  N. Ahmed,et al.  Discrete Cosine Transform , 1996 .

[12]  Conrad Sanderson,et al.  On Local Features for Face Verification , 2004 .

[13]  Meng Joo Er,et al.  PCA and LDA in DCT domain , 2005, Pattern Recognit. Lett..

[14]  Keinosuke Fukunaga,et al.  Introduction to Statistical Pattern Recognition , 1972 .

[15]  David Zhang,et al.  An assembled matrix distance metric for 2DPCA-based image recognition , 2006, Pattern Recognit. Lett..

[16]  Zhang Qian Fusion of SVD and LDA for face recognition , 2006 .

[17]  Zi-Quan Hong,et al.  Algebraic feature extraction of image for recognition , 1991, Pattern Recognit..

[18]  Nenghai Yu,et al.  Fusion of SVD and LDA for face recognition , 2004, 2004 International Conference on Image Processing, 2004. ICIP '04..

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

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

[21]  Ja-Chen Lin,et al.  A new LDA-based face recognition system which can solve the small sample size problem , 1998, Pattern Recognit..

[22]  Juyang Weng,et al.  Using Discriminant Eigenfeatures for Image Retrieval , 1996, IEEE Trans. Pattern Anal. Mach. Intell..

[23]  Mohamed Cheriet,et al.  Application of 2DPCA Based Techniques in DCT Domain for Face Recognition , 2008, CISIS.