Robust Face Recognition System based on a multi-views face database

Abstract : In this chapter, we describe a new robust face recognition system base on a multi-views face database that derives some 3-D information from a set of face images. We attempt to build an approximately 3-D system for improving the performance of face recognition. Our objective is to provide a basic 3-D system for improving the performance of face recognition. The main goal of this vision system is 1) to minimize the hardware resources, 2) to obtain high success rates of identity verification, and 3) to cope with real-time constraints. Using the multi-views database, we address the problem of face recognition by evaluating the two methods PCA and ICA and comparing their relative performance. We explore the issues of subspace selection, algorithm comparison, and multi-views face recognition performance. In order to make full use of the multi-views property, we also propose a strategy of majority voting among the five views, which can improve the recognition rate. Experimental results show that ICA is a promising method among the many possible face recognition methods, and that the ICA algorithm with majority-voting is currently the best choice for our purposes.
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Dominique Ginhac, Fan Yang, Xiaojuan Liu, Jianwu Dang, Michel Paindavoine. Robust Face Recognition System based on a multi-views face database. Recent Advances in Face Recognition, K. Delac, M. Grgic and M.S. Bartlett, pp.27-38, 2008, 978-953-7619-34-3. ⟨10.5772/6391⟩. ⟨hal-00704378⟩

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