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Vol: 47(61) No: 1 / March 2002      

Identity Confirmation System Based on CTAG and HMM
Robert Stefan Gyorodi
Department of Electronic and Computer Engineering, University of Limerick, National Technological Park, Limerick, Ireland, phone: +353 (0) 61 212-095, e-mail: Robert.Gyorodi@ul.ie, web: http://www.ece.ul.ie/robert
Stefan Holban
Computer Science and Engineering Department, Politehnica University of Timisoara, Bd. Vasile Parvan 2, 1900, Timisoara, Romania, phone: +40(0)56 204-333 ext, e-mail: stefan@cs.utt.ro, web: http://www.cs.utt.ro/~stefan
Tom Coffey
Department of Electronic and Computer Engineering, University of Limerick, National Technological Park, Limerick, Ireland, phone: +353 (0) 61 212-268, e-mail: Tom.Coffey@ul.ie, web: http://www.ece.ul.ie/
Cornelia Aurora Gyorodi
Department of Computer Science, Faculty of Electrotehnics and Informatics, University of Oradea, Str. Armatei Romane 5, 3700, Oradea, Romania, phone: +40 (0) 59 432-830, e-mail: cgyorodi@univ.uoradea.ro


Keywords: Face recognition, embedded HMM, CTAG, Identity Confirmation.

Abstract
Facial recognition from still images and video sequences is emerging as an active research area with numerous commercial and law enforcement applications. Hidden Markov Models (HMM) have been successfully used for speech and action recognition where the data that is to be modeled is one-dimensional. Although attempts to use these one-dimensional HMMs for face recognition have been moderately successful, images are two-dimensional (2-D) and consequently a two dimensional model should perform better. In this paper we present a new approach for face recognition using an embedded HMM and compare this approach to other HMM-based methods.

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