Abstract
Smart Rooms have many interesting advantages in real world applications. They have cameras, microphones, and other sensors installed for performing different functions such as tracking and recognizing people’s expressions and gestures, interpreting their behaviors, and finally extracting the required data for specific purposes. In this paper, we propose an accurate face detection/recognition system to recognize people who enter the smart room, then identifying if he/she is an intruder or a registered user of the facility. Accurate face recognition is still a difficult task, especially in the cases that background, pose, expression, lighting and illumination are unconstrained. Through some experiments, in this paper, we deduce that when taking the central part of the upright frontal faces(including eyes, nose, mouth and chin, but no hair) as samples to make face recognition, the recognition rate will be improved dramatically, even with different expressions, not too extreme lighting change and slight head rotation. For the module of face detection, a support vector machine (SVM) approach is used. And classical eigenface algorithm is utilized to solve the face recognition problem. We combined these two techniques together to construct a system for face detection/recognition with accuracy as high as 96.25%.
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References
Rama Chellappa, Charles L. Wilson and Saad Sirohey, “Human and Machine Recognition of Faces: A Survey” Proceedings of the IEEE vol. 83 no. 5, pp. 705–740 (1995).
A. Samal and P. Iyengar, “Automatic Recognition and Analysis of Human Faces and Facial Expressions: A Survey,” Pattern Recognition vol. 25, pp.65–77 (1992).
Roberto Brunelli and Tomaso Poggio, “ Face Recognition: Features versus Templates”, IEEE Trans. On Pattern Analysis and Machine Intelligence, Vol. 15, No.10, pp. 1042–152 Oct 1993.
Matthew Turk and Alex Pentland, “Eigenfaces for Recognition” Journal of Cognitive Neuroscience vol. 3 no. 1, pp.71–86 (1991).
Matthew A. Turk and Alex P. Pentland, “Face Recognition Using Eigenfaces” Proceedings of International Conference on Pattern Recognition, pp.586–591 (1991).
B. Moghaddam and A. Pentland, “Probabilistic visual learning for object recognition,” IEEE Trans.on Pattern Analysis and Machine Intelligence, vol.19, no.7, pp. 696–710,July 1997.
K.-K. Sung and T. Poggio, “Example-based learning for view-based human face detection,” IEEE Trans.on Pattern Analysis and Machine Intelligence, vol.20, no.1, pp.39–51,January 1998.
H.A. Rowley, S. Balujao, and T. Kanade, “ Neural network-based face detection,” IEEE Trans.on Pattern Analysis and Machine Intelligence, vol.20, no.1, pp.23–37, January 1998.
M.-H. Yang, N. Ahujia, and D. Kriegman, “Detecting Faces in Images: A Survey,” IEEE Trans.on Pattern Analysis and Machine Intelligence, vol.24, no.1, pp.34–58, January 2002.
E. Osuna, R. Freund, and F. Girosi, “Training support vector machines:An application to face detection,” in Proc. IEEE Computer ociety Conf.Computer Vision and Pattern Recognition, pp.130–136, 1997.
C.J.C. Burges, “A Tutorial on Support Vector Machines for Patern Recognition,” Data Mining and Knowledge Discovery, vol.2, no.2, pp.121–167,1998.
V.N. Vapnik,The Nature of Statistical Learning Theory.New York: Springer Verlag, 1995.
S. Gunn, “Support Vector Machines for Classification and Regression”, ISIS Technical Report ISIS-1-98, Image Speech and Intelligent Systems Research Group,University of Southapton,May,1998.
I. Buciu, C. Kotropoulos, and I. Pitas, “Combining Support Vector Machines for Accurate Face Detection,” IEEE Intel. Conf. on Image Processing,Vol 1, Pages 1054–1057, 2001.
Haizhou Ai, Luhong Liang, and Guangyou Xu, “ Face Detection Based on Template Matching and Support Vector Machines,” IEEE Intel. Conf. on Image Processing, Vol 1, Pages 1006–1009 2001.
J.C. Platt, “Sequential Minimal Optimization: A Fast Algorithm for Training Support Machines,” Technical Report MSR-TR-98-14,1998.
De Silva, L.C. Esther, K.G.P. “Emotion-independent face recognition” Proceedings of SPIE Volume 4310, 2001, Pages 603–613.
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Kui, J., De Silva, L.C. (2003). Combined Face Detection/Recognition System for Smart Rooms. In: Kittler, J., Nixon, M.S. (eds) Audio- and Video-Based Biometric Person Authentication. AVBPA 2003. Lecture Notes in Computer Science, vol 2688. Springer, Berlin, Heidelberg. https://doi.org/10.1007/3-540-44887-X_91
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DOI: https://doi.org/10.1007/3-540-44887-X_91
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