Home > CSC-OpenAccess Library > Manuscript Information
EXPLORE PUBLICATIONS BY COUNTRIES |
EUROPE | |
MIDDLE EAST | |
ASIA | |
AFRICA | |
............................. | |
United States of America | |
United Kingdom | |
Canada | |
Australia | |
Italy | |
France | |
Brazil | |
Germany | |
Malaysia | |
Turkey | |
China | |
Taiwan | |
Japan | |
Saudi Arabia | |
Jordan | |
Egypt | |
United Arab Emirates | |
India | |
Nigeria |
Identification of Untrained Facial Image in Combined Global and Local Preserving Feature Space
Ruba Soundar Kathavarayan, Murugesan Karuppasamy
Pages - 1 - 12 | Revised - 25-02-2010 | Published - 31-03-2010
MORE INFORMATION
KEYWORDS
Biometric Technology, Face Recognition, Adaptive clustering, Global Feature, Local Feature
ABSTRACT
In real time applications, biometric authentication has been widely regarded as the most foolproof - or at least the hardest to forge or spoof. Several research works on face recognition based on appearance, features like intensity, color, textures or shape have been done over the last decade. In those works, mostly the classification is achieved by using the similarity measurement techniques that find the minimum distance among the training and testing feature set. When presenting This leads to the wrong classification when presenting the untrained image or unknown image, since the classification process locates at least one wining cluster that having minimum distance or maximum variance among the existing clusters. But for the real time security related applications, these new facial image should be reported and the necessary action has to be taken accordingly. In this paper we propose the following two techniques for this purpose:
i. Uses a threshold value calculated by finding the average of the minimum matching distances of the wrong classifications encountered during the training phase.
ii. Uses the fact that the wrong classification increases the ratio of within-class distance and between-class distance.
Experiments have been conducted using the ORL facial database and a fair comparison is made with these two techniques to show the efficiency of these techniques.
1 | Benzaoui, A., & Boukrouche, A. (2014). Face Recognition Using Local Binary Patterns in One Dimensionnal Space and Wavelets. IT4OD, 211. |
2 | Amir, B. (2014). Face Analysis, Description and Recognition using Improved Local Binary Patterns in One Dimensional Space. Journal of Control Engineering and Applied Informatics, 16(4), 52-60. |
3 | Amir, B. (2014). Face Analysis, Description and Recognition using Improved Local Binary Patterns in One Dimensional Space. Journal of Control Engineering and Applied Informatics, 16(4), 52-60. |
4 | Benzaoui, A., & Boukrouche, A. (2013, April). 1DLBP and PCA for Face Recognition. In Programming and Systems (ISPS), 2013 11th International Symposium on (pp. 7-11). IEEE. |
A.M. Bazen, G.T.B. Verwaaijen, S.H. Gerez, L.P.J. Veelenturf, and B.J. Van der Zwaag, ‘A correlation-based fingerprint verification system‘, Proceedings of Workshop on Circuits Systems and Signal Processing, pp.205–213, 2000. | |
B. Moghaddam, T. Jebara, and A. Pentland, ‘Bayesian Face Recognition‘, Pattern Recognition, vol. 33, No. 11, pp.1771-1782, November, 2000. | |
Constantine Kotropoulos, Ioannis Pitas, ‘Using support vector machines to enhance the performance of elastic graph matching for frontal face authentication‘, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 23, no. 7, pp.735–746, July 2001. | |
Constantine L. Kotropoulos, Anastasios Tefas, Ioannis Pitas, ‘Frontal face authentication using discriminating grids with morphological feature vectors‘, IEEE Transactions on Multimedia, vol. 2, no. 1, pp.14–26, March 2000. | |
F.Y. Shih, C.F. Chuang, and P.S.P. Wang, ‘Performance Comparisons of Facial Expression Recognition in Jaffe Database‘, International Journal of Pattern Recognition and Artificial Intelligence, Vol.22, No.3, pp. 445-459, 2008. | |
K. Nandhakumar, Anil K.Jain, ‘Local correlation-based fingerprint matching‘, Proceedings of ICVGIP, Kolkatta, 2004. | |
K. Ruba Soundar, K. Murugesan, ‘Preserving Global and Local Features – A Combined Approach for Recognizing Face Images‘, International Journal of Pattern Recognition and Artificial Intelligence, Vol.24, issue 1, 2010. | |
K. Ruba Soundar, K. Murugesan, ‘Preserving Global and Local Features for Robust Face Recognition under Various Noisy Environments ‘, International Journal of Image Processing, Vol.3, issue 6, 2009. | |
Lian Hock Koh, Surendra Ranganath, Y.V.Venkatesh, ‘An integrated automatic face detection and recognition system‘, Pattern Recognition, vol. 35, pp.1259–1273, 2002. | |
M. Belkin, P. Niyogi, ‘Using manifold structure for partially labeled classification‘, Proceedings of Conference on Advances in Neural Information Processing System, 2002. | |
M. Turk, A. Pentland, ‘Eigenfaces for recognition’, Journal of Cognitive NeuroScience, vol. 3, pp.71–86, 1991. | |
P.N. Belhumeur, J.P. Hespanha, D.J. Kriegman, ‘Eigenfaces vs. Fisherfaces: recognition using class specific linear projection‘, IEEE Transactions on Pattern Analysis and Machine Intelligence vol. 19, no. 7, pp.711-720, 1997. | |
S. Ioffe, ‘Probabilistic Linear Discriminant Analysis‘, Proceedings of the European Conference on Computer Vision, Vol.4, pp.531-542, 2006. | |
S. Srisuk, and W. Kurutach, ‘Face Recognition using a New Texture Representation of Face Images‘, Proceedings of Electrical Engineering Conference, Cha-am, Thailand, pp. 1097- 1102, 06-07 November 2003. | |
S.J.D. Prince, and J.H. Elder, ‘Probabilistic linear discriminant analysis for inferences about identity‘, Proceedings of the IEEE International Conference on Computer Vision, 2007. | |
Sang-Woong Lee, P.S.P. Wang, S.N.Yanushkevich, and Seong-Whan Lee, ‘Noniterative 3D Face Reconstruction Based On Photometric Stereo‘, International Journal of Pattern Recognition and Artificial Intelligence, Vol.22, No.3, pp.389-410, 2008. | |
W. Zhao, R. Chellappa, A. Rosenfeld, P.J. Phillips, ‘Face Recognition: A Literature Survey‘, UMD CAFR, Technical Report, CAR-TR-948, October 2000. | |
X. He, P. Niyogi, ‘Locality preserving projections‘, Proceedings of Conference on Advances in Neural Information Processing Systems, 2003. | |
X. You, Q. Chen, D. Zhang, P.S.P.Wang, ‘Nontensor-Product-Wavelet-Based Facial Feature Representation‘, in Image Pattern Recognition - Synthesis and Analysis in Biometrics, pp. 207-224, WSP, 2007. | |
Y. Luo, M. L. Gavrilova, P.S.P.Wang, ‘Facial Metamorphosis Using Geometrical Methods for Biometric Applications‘, International Journal of Pattern Recognition and Artificial Intelligence, Vol.22, No.3, pp.555-584, 2008. | |
Yongsheng Gao, Maylor K. H. Leung, ‘Face recognition using line edge map‘, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 24, no. 6, pp. 764–779, June 2002. | |
Professor Ruba Soundar Kathavarayan
P.S.R. Engineering College, Sivakasi - India
rubasoundar@yahoo.com
Dr. Murugesan Karuppasamy
Maha Barathi Engineering College - India
|
|
|
|
View all special issues >> | |
|
|