FACE IDENTIFICATION USING BACK-PROPAGATION ADAPTIVE MULTIWAVENET
Main Article Content
Abstract
Face Identification is an important research topic in the field of computer vision and pattern recognition and has become a very active research area in recent decades. Recently multiwavelet-based neural networks (multiwavenets) have been used for function approximation and recognition, but to our best knowledge it has not been used for face Identification. This paper presents a novel approach for the Identification of human faces using Back-Propagation Adaptive Multiwavenet. The proposed multiwavenet has a structure similar to a multilayer perceptron (MLP) neural network with three layers, but the activation function of hidden layer is replaced with multiscaling functions. In experiments performed on the ORL face database it achieved a recognition rate of 97.75% in the presence of facial expression, lighting and pose variations. Results are compared with its wavelet-based counterpart where it obtained a recognition rate of 10.4%. The proposed multiwavenet demonstrated very good recognition rate in the presence of variations in facial expression, lighting and pose and outperformed its wavelet-based counterpart.
Article Details
How to Cite
Publication Dates
References
Bin Z., De-yuan H., and Tao L., “Research on the Application of Wavelet Neural Network in the Surrounding Rock Displacement rediction,” 2nd International Asia Conference on Informatics in Control, Automation and Robotics (CAR 2010), Wuhan, China, pp. 266-269, 6-7 March 2010.
Deniz O., Castrillfion M., and Hernfiandez M., “Face recognition using independent component analysis and support vector machines”, Pattern Recognition letters, vol. 24, pp. 2153-2157, 2003.
Ensafi A.A., Khayamian T., and Tabaraki R., “Simultaneous Kinetic Determination of Thiocyanate and Sulfide Using Eigenvalue Ranking and Correlation Ranking in Principal ComponentWavelet Neural Network,” Talanta, Vol. 71, Issue 5, pp. 2021-2028, March 2007.
Er M.J., Chen W., and Wu S., “High speed face recognition based on discrete cosine transform and RBF neural network”, IEEE Trans. On Neural Network, vol. 16, no.3, pp. 679-691, 2005.
Er M.J., Wu S., Lu J., and Toh L.H., “face recognition with radial basis function (RBF) neural networks”, IEEE Transactions on Neural Networks, vol. 13, no. 3, pp. 697-710, 2003.
Fan X., and Verma B., “A Comparative Experimental Analysis of Separate and Combined Facial Features for GA-ANN based Technique,” Sixth International Conference on Computational Intelligence and Multimedia Applications, pp. 279- 284, Aug. 2005.
Huang L.L., and Shimizu A., “Combining Classifiers for Robust Face Detection,” In Lecture Notes in Computer Science, 3972, Springer-Verlag, pp. 116-121, 2006.
Jiao L.C., Pan J., and Fang Y.W., “Multiwavelet neural networks and its approximation properties,” IEEE Transactions on Neural Networks, Vol. 12, Issue 5, pp. 1060-1066, 2001.
Lee K., Chung Y., and Byun H., “SVM based face verification with feature set of small size”, Electronic letters, vol. 38, no.15, pp. 787-789, 2002.
Li G., Zhang J., Wang Y., and Freeman W.J., “Face Recognition Using a Neural Network Simulating Olfactory Systems,” In Lecture Notes in Computer Science, 3972, Springer-Verlag, pp. 93-97, 2006.
Liu L., and Liu Y., “MQPSO based on wavelet neural network for network anomaly detection,” 5th International Conference on Wireless Communications, Networking and Mobile Computing (WiCom'09), Beijing, China, pp. 1-5,
-26 Sep. 2009.
Long-yun X., Zhi-yuan R., and Rui-cheng F., “Gear Faults Diagnosis Based on Wavelet Neural Networks,” Proceedings of IEEE International Conference on Mechatronics and Automation, Takamatsu, Japan, pp. 452-455, 5-8 Aug. 2008.
Lu K., He X., and Zhao J., “Semi-supervised Support Vector Learning for Face Recognition,” In Lecture Notes in Computer Science, 3972, SpringerVerlag, pp. 104-109, 2006.
Lu X., Wang Y., and Jain A.K., “Combining Classifiers for Face Recognition,” Proceedings of International Conference on Multimedia and Expo (ICME '03), Vol. 3, pp. 13-16, 2003.
Moghaddam B., “Principal manifolds and probabilistic subspaces for visual recognition", IEEE Transactions on pattern Anal. Machine Intelligence, vol. 24, no.6, pp. 780-788, 2002.
Othman H., and Aboulnasr T., “A separable low complexity 2D HMM with application to face recognition”, IEEE Trans. Pattern. Anal. Machie nInell., vol. 25, no.10, pp. 1229-1238, 2003.
Pang S., Kim D., and Bang S.Y., “Face Membership Authentication Using SVM Classification Tree Generated by Membership-Based LLE Data Partition”. In IEEE Transactions on Neural Networks, Vol. 16, Issue 2, pp. 436-446, 2005.
Park C., Ki M., Namkung J., and Paik J.K., “Multimodal Priority Verification of Face and Speech Using Momentum Back-Propagation Neural Network,” In Lecture Notes in Computer Science, 3972, Springer-Verlag, pp. 140-149, 2006.
Plonka G., and Strela V., “Construction of MultiScaling Functions with Approximation and Symmetry,” SIAM Journal on Mathematical Analysis, Vol. 29, Issue 2, pp. 481-510, March 1998.
Shen Y., Wang Q., and Yu S., “A Target Recognition of Wavelet Neural Network Based on Relative Moment Features,” Proceedings of the 5th World Congress on Intelligent Control and Automation, Hangzhou, P.R. China, Vol. 5, pp. 4089–4091, 15-19 June 2004.
Turk M., and Pentland A., “Eigen faces for face recognition”, Journal cognitive neuroscience, vol. 3, no.1, 1991.
Yang X., Kumehara H., and Zhang W., “Back Propagation Wavelet Neural Network Based Prediction of Drill Wear from Thrust Force and Cutting Torque Signals,” Canadian Center of Science and Education (CCSE), Computer and Information Science Journal, Vol. 2, Issue 3, pp. 75- 86, Aug. 2009.
Zhang B., Zhang H., and Ge S., “Face Recognition by Applying Wavelet Subband Representation and Kernel Associative Memory,” In IEEE Transactions on Neural Networks, Vol. 15, pp. 166-177, 2004.
Zhao W., Chellappa R., and Krishnaswamy A,, “Discriminant analysis of principal component for face recognition”, IEEE Transactions on Pattern Anal. Machine Intelligence, vol. 8, 1997.
Zhao W., Chellappa R., Phillips J., and Rosenfeld A., “Face recognition in still and video images: A literature survey”, ACM Comput Surv vol. 35, pp. 399–458, 2003.
Zhao Y.Z., and Li X., “A Dual-Momentum Hybrid Wavelet Neural Net (DM-HWNN): Its Performance Evaluation and Application,” 7th IEEE International Conference on Industrial Informatics (INDIN 2009), Cardiff, Wales, UK, pp. 325-330, 23-26 June 2009.
Zhou W., Pu X., and Zheng Z., “Parts-Based Holistic Face Recognition with RBF Neural Networks,” In Lecture Notes in Computer Science, 3972, Springer-Verlag, pp. 110-115, 2006.