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Selection of Distinctive SIFT Feature Based on
This paper investigates a face recognition system b ased on Scale Invariant Feature Transform (SIFT) fe ature and
its distribution on feature space. The system takes advantage of SIFT which possess strong robustness to expression, accessory
pose and illumination variations. Since we use each of SIFT keypoint as the feature of face and SIFT k eypoints are very
complicated in feature space, we apply the feature partition on Self Organizing Map (SOM) and adopt lo cal Multilayer
Perceptron (MLP) for each node on map to improve t he classification performance. Moreover the distinctive features from all
SIFT keypoints in each face class are defined and e xtracted based on feature distribution on SOM. Fina lly the face can be
recognized through the proposed scoring method depe nding on the classification result of these distinctive features. In the
experiments, the proposed method gave a higher face recognition rate than other methods including matching and holistic
feature based methods in three famous databases.
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[19] Zhang L., Chen J., Lu Y., and Wang P., Face Recogntion using Scale Invariant Feature Transform and Support Vector Machine, in Proceedings of 9 th International Conference for Young Computer Scientists , Hunan, pp. 1766- 1770, 2008. Tong Liu received his BSc degree in information security engineering from Daebul University in 2008 and MS degree in computer engineering from Kyung Hee University in 2010. His research interests include face recognition, image processing, computer vision and machine learning. Sung-Hoon Kim received his BSc degree in computer engineering from Daebul University, Korea in 2002. He received MS degree in Electronic Computing Engineering from Kyung Hee University in 2004. Now he is pursuing his PhD in the Department of Computer Engineering, Kyung Hee University, Korea. His research interests include neural networ k, pattern recognition and face detection. Sung-Kil Lim received his BSc degree in Mathematics, MSc degree in computing engineering and phd degree in computer engineering from Kyung Hee University, Korea, in 1997, 1999 and 2009, respectively. His research interests include auditory scene analysis, pattern recognition and ne ural network. He is now a senior engineer working in Brisys Technologies Company, Korea. Hyon-Soo Lee received his BSc degree in electronics engineering from Kyung Hee University, Korea, and the MS, PhD degree in electrical engineering from Keio University, Yokohama, Japan in 1979, 1982 and 1985, respectively. He is now a professor in the Department of Computer Engineering , Kyung Hee University. His research interests includ e neural network, pattern recognition and parallel architecture.