DocumentCode
3626596
Title
Representability of human motions by factorial hidden Markov models
Author
Dana Kulic;Wataru Takano;Yoshihiko Nakamura
Author_Institution
Department of Mechano-Informatics, University of Tokyo, 7-3-1 Hongo, Bunkyo-ku, 113-8656, Japan
fYear
2007
Firstpage
2388
Lastpage
2393
Abstract
This paper describes an improved methodology for human motion recognition and imitation based on factorial hidden Markov models (FHMM). Unlike conventional hidden Markov models (HMMs), FHMMs use a distributed state representation, which allows for more efficient representation of each time sequence. Once the FHMMs are trained with exemplar motion data, they can be used to generate sample trajectories for motion production, and produce significantly more accurate trajectories compared to single Hidden Markov chain models. Due to the additional information encoded in FHMMs models, FHMM models have a higher Kullback-Leibler distance compared to single Markov chain models, making it easier to distinguish between similar models. The efficacy of using FHMMs is tested on a database of human motions obtained through motion capture. The results show that FHMMs provide better generalization to new data when compared to conventional HMMs during motion recognition, as well as providing a better fit for generated data.
Keywords
"Humans","Hidden Markov models","Neurons","Mirrors","Humanoid robots","Intelligent robots","USA Councils","Production","Testing"
Publisher
ieee
Conference_Titel
Intelligent Robots and Systems, 2007. IROS 2007. IEEE/RSJ International Conference on
ISSN
2153-0858
Print_ISBN
978-1-4244-0911-2
Electronic_ISBN
2153-0866
Type
conf
DOI
10.1109/IROS.2007.4399325
Filename
4399325
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