Home   >   CSC-OpenAccess Library   >    Manuscript Information
Statistical Models for Face Recognition System With Different Distance Measures
R.Thiyagarajan, S. Arulselvi, G.Sainarayanan
Pages - 647 - 660     |    Revised - 31-01-2011     |    Published - 08-02-2011
Volume - 4   Issue - 6    |    Publication Date - January / February  Table of Contents
MORE INFORMATION
KEYWORDS
Face Recognition, Statistical Models, Distance measure methods, PCA/LDA/ICA
ABSTRACT
Face recognition is one of the challenging applications of image processing. Robust face recognition algorithm should posses the ability to recognize identity despite many variations in pose, lighting and appearance. Principle Component Analysis (PCA) method has a wide application in the field of image processing for dimension reduction of the data. But these algorithms have certain limitations like poor discriminatory power and ability to handle large computational load. This paper proposes a face recognition techniques based on PCA with Gabor wavelets in the preprocessing stage and statistical modeling methods like LDA and ICA for feature extraction. The classification for the proposed system is done using various distance measure methods like Euclidean Distance(ED), Cosine Distance (CD), Mahalanobis Distance (MHD) methods and the recognition rate were compared for different distance measures. The proposed method has been successfully tested on ORL face data base with 400 frontal images corresponding to 40 different subjects which are acquired under variable illumination and facial expressions. It is observed from the results that use of PCA with Gabor filters and features extracted through ICA method gives a recognition rate of about 98% when classified using Mahalanobis distance classifier. This recognition rate stands better than the conventional PCA and PCA + LDA methods employing other and classifier techniques.
CITED BY (3)  
1 Vijayalakshmi, G. V., Raj, A. N. J., & Ashok Varma, S. V. S. K. (2014, October). Optimum selection of features for 2D (color) and 3D (depth) face recognition using modified PCA (2D). In Smart Structures and Systems (ICSSS), 2014 International Conference on (pp. 1-7). IEEE.
2 Kurniawan, D. E. Identifikasi Citra Wajah Menggunakan Gabor-based Kernel Principal Component Analysis.
3 Wu, F., Xiao, Q., & Vo, T. D. (2013). Face image database: a test-bed for evaluation and certification of facial recognition systems. International journal of biometrics, 5(3-4), 211-228.
1 Google Scholar 
2 Google Scholar 
3 CiteSeerX 
4 refSeek 
5 iSEEK 
6 Socol@r  
7 Scribd 
8 WorldCat 
9 SlideShare 
10 PdfSR 
A. Hossein Sahoolizadeh, B. Zargham, “A New feace recognition method using PCA, LDA and Neural Networks”, proceedings of word academy of science, Engineering and Tech, 31,2008.
A. J. O'Toole, H. Abdi, K. A. Deffenbacher and D. Valentin, “A low- dimensional representation of faces in the higher dimensions of the space”, J. Opt. Soc. Am., A, 10:405-411,1993.
C. Liu and H. Wechsler, “Comparative Assessment of Independent Component Analysis (ICA) for Face Recognition”, In Proceedings of the International Conference on Audio and Video Based Biometric Person Authentication, Washington, DC, 1999.
Chengjun Liu, and Harry Wechsler, “Independent Component Analysis of Gabor Features for Face Recognition”, IEEE Transactions on Neural Networks, 14(4):919-928, 2003.
D. L. Swets and J. J. Weng, “Using discriminant eigenfeatures for image retrieval”, IEEE Trans. PAMI., 18(8):831-836,1996.
J. G. Daugman, “Two dimensional spectral analysis of cortical receptive field profile”, Vision Research, 20: 847-856, 1980.
Kresimir Delac, Mislav Grgic, Sonja Grgic , “Independent comparative Study of PCA, ICA, and LDA on the FERET Data Set”, Wiley periodicals, 15:252-260, 2006.
M. H. Yang, N. Ahuja, and D. Kriegman, “Face recognition using kernel eigenfaces,” Proc. IEEE Int. Conf. Image Processing, 2000.
M. Kirby and L. Sirovich, “Application of the karhunenloeve procedure for the characterization of human faces”, IEEE Trans. Pattern Analysis and Machine Intelligence, 12(1):103-108,1990.
M. Lades, J.C. Vorbruggen, J. Buhmann, J. Lange, C. von der Malsburg, Wurtz R.P., and W. Konen, “Distortion invariant object recognition in the dynamic link architecture” IEEE Trans. Computers, 42:300–311, 1993.
M. Turk and A. Pentland, “Eigenfaces for recognition” J. Cognitive Neuroscience, 3: 71-86,1991.
M.S. Bartlett, J.R. Movellan, and T.J. Sejnowski, “Face recognition by independent component analysis”, IEEE Trans Neural Networks, 13:1450–1464, 2002.
Marian Stewart Bartlett, Javier R. Movellan, and Terrence J. Sejnowski,”Face Recognition by Independent Component Analysis”, IEEE Trans on Neural Networks,13(6):1450-1464,2002.
P. Belhumeur J. P. Hespanha and D. J. Kriegman, “Eigenfaces vs. Fisherfaces; Recognition using class specific linear projection”, Pattern Recognition and Machine Intelligence, 17(9):711-720, 1997.
P. Comon, “Independent component analysis, a new concept” Signal Processing, 36:287–314, 1994.
S. Marcelja, “Mathematical description of the responses of simple cortical cells” Journal Opt. Soc. Amer.,70:1297–1300, 1980.
Vitomir Struc, Nikola pavesi, “Gabor-Based Kernel Partial-Least-Squares Discrimination Features for Face Recognition”, Informatica, 20(1):115–138, 2009.
W. Zaho, R.Chellappa, P.J.Philips and A.Rosenfeld, “Face recognition A literature survey,” ACM Computing Surveys, 35(4):399– 458,2003.
Mr. R.Thiyagarajan
Annamalai University - India
thiyagucdm@gmail.com
Mr. S. Arulselvi
- India
Mr. G.Sainarayanan
- India


CREATE AUTHOR ACCOUNT
 
LAUNCH YOUR SPECIAL ISSUE
View all special issues >>
 
PUBLICATION VIDEOS