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research article
Feature distribution modelling techniques for 3D face recognition
This paper shows that Hidden Markov Models (HMMs) can be effectively ap- plied to 3D face data. The examined HMM techniques are shown to be superior to a previously examined Gaussian Mixture Model (GMM) technique. Experi- ments conducted on the Face Recognition Grand Challenge database show that the Equal Error Rate can be reduced from 0.88% for the GMM technique to 0.36% for the best HMM approach.
Type
research article
Authors
Publication date
2010
Published in
Volume
31
Start page
1324
End page
1330
Peer reviewed
REVIEWED
EPFL units
Available on Infoscience
February 7, 2011
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