DocumentCode :
767212
Title :
User authentication via adapted statistical models of face images
Author :
Cardinaux, Fabien ; Sanderson, Conrad ; Bengio, Samy
Author_Institution :
IDIAP Res. Inst., Martigny, Switzerland
Volume :
54
Issue :
1
fYear :
2006
Firstpage :
361
Lastpage :
373
Abstract :
It has been previously demonstrated that systems based on local features and relatively complex statistical models, namely, one-dimensional (1-D) hidden Markov models (HMMs) and pseudo-two-dimensional (2-D) HMMs, are suitable for face recognition. Recently, a simpler statistical model, namely, the Gaussian mixture model (GMM), was also shown to perform well. In much of the literature devoted to these models, the experiments were performed with controlled images (manual face localization, controlled lighting, background, pose, etc). However, a practical recognition system has to be robust to more challenging conditions. In this article we evaluate, on the relatively difficult BANCA database, the performance, robustness and complexity of GMM and HMM-based approaches, using both manual and automatic face localization. We extend the GMM approach through the use of local features with embedded positional information, increasing performance without sacrificing its low complexity. Furthermore, we show that the traditionally used maximum likelihood (ML) training approach has problems estimating robust model parameters when there is only a few training images available. Considerably more precise models can be obtained through the use of Maximum a posteriori probability (MAP) training. We also show that face recognition techniques which obtain good performance on manually located faces do not necessarily obtain good performance on automatically located faces, indicating that recognition techniques must be designed from the ground up to handle imperfect localization. Finally, we show that while the pseudo-2-D HMM approach has the best overall performance, authentication time on current hardware makes it impractical. The best tradeoff in terms of authentication time, robustness and discrimination performance is achieved by the extended GMM approach.
Keywords :
adaptive signal processing; face recognition; hidden Markov models; maximum likelihood estimation; Gaussian mixture model; adapted statistical model; face images; face localization; face recognition system; maximum a posteriori probability; maximum likelihood training approach; one-dimensional hidden Markov models; pseudo-two-dimensional hidden Markov models; user authentication; Authentication; Automatic control; Face recognition; Hidden Markov models; Image databases; Lighting control; Maximum likelihood estimation; Parameter estimation; Robustness; Spatial databases; Access control; Gaussian mixture models (GMMs); biometrics; face localization; face recognition; hidden Markov models (HMMs); local features; maximum a posteriori probability (MAP) training;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2005.861075
Filename :
1561601
Link To Document :
بازگشت