DocumentCode :
2542156
Title :
Coupled hidden Markov models for complex action recognition
Author :
Brand, Matthew ; Oliver, Nuria ; Pentland, Alex
Author_Institution :
Media Lab., MIT, Cambridge, MA, USA
fYear :
1997
fDate :
17-19 Jun 1997
Firstpage :
994
Lastpage :
999
Abstract :
We present algorithms for coupling and training hidden Markov models (HMMs) to model interacting processes, and demonstrate their superiority to conventional HMMs in a vision task classifying two-handed actions. HMMs are perhaps the most successful framework in perceptual computing for modeling and classifying dynamic behaviors, popular because they offer dynamic time warping, a training algorithm and a clear Bayesian semantics. However the Markovian framework makes strong restrictive assumptions about the system generating the signal-that it is a single process having a small number of states and an extremely limited state memory. The single-process model is often inappropriate for vision (and speech) applications, resulting in low ceilings on model performance. Coupled HMMs provide an efficient way to resolve many of these problems, and offer superior training speeds, model likelihoods, and robustness to initial conditions
Keywords :
Bayes methods; computer vision; hidden Markov models; speech recognition; Bayesian semantics; complex action recognition; coupled hidden Markov models; dynamic behaviors; dynamic time warping; limited state memory; model likelihoods; robustness; single-process model; training algorithm; training speeds; two-handed actions; vision task; Application software; Bayesian methods; Computer vision; Hidden Markov models; Robustness; Signal generators; Signal processing; Signal resolution; Speech; Turning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision and Pattern Recognition, 1997. Proceedings., 1997 IEEE Computer Society Conference on
Conference_Location :
San Juan
ISSN :
1063-6919
Print_ISBN :
0-8186-7822-4
Type :
conf
DOI :
10.1109/CVPR.1997.609450
Filename :
609450
Link To Document :
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