Title
Face verification using adapted generative models
Abstract
It has been shown previously that systems based on local features and relatively complex generative models, namely 1D Hidden Markov Models (HMMs) and pseudo-2D HMMs, are suitable for face recognition (here we mean both identification and verification). Recently a simpler generative model, namely the Gaussian Mixture Model (GMM), was also shown to perform well. In this paper we first propose to increase the performance of the GMM approach (without sacrificing its simplicity) through the use of local features with embedded positional information; we show that the performance obtained is comparable to 1D HMMs. Secondly, we evaluate different training techniques for both GMM and HMM based systems. 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; we propose to tackle this problem through the use of Maximum a Posteriori (MAP) training, where the lack of data problem can be effectively circumvented; we show that models estimated with MAP are significantly more robust and are able to generalize to adverse conditions present in the BANCA database.
Year
DOI
Venue
2004
10.1109/AFGR.2004.1301636
FGR
Keywords
DocType
ISBN
maximum likelihood,data problem,robust model parameter,training image,training approach,different training technique,gmm approach,complex generative model,pseudo-2d hmms,local feature,face verification,gaussian processes,feature extraction,gaussian mixture model,access control,maximum likelihood estimation,hidden markov models,face recognition,vision,parameter estimation,authentication,robustness,hidden markov model
Conference
0-7695-2122-3
Citations 
PageRank 
References 
28
2.15
8
Authors
3
Name
Order
Citations
PageRank
Fabien Cardinaux127919.00
Conrad Sanderson2154683.46
Samy Bengio37213485.82