Title :
Human walking motion synthesis based on multiple regression hidden semi-Markov model
Author :
Yamazaki, Takashi ; Niwase, Naotake ; Yamagishi, Junichi ; Kobayashi, Takao
Author_Institution :
Interdisciplinary Graduate Sch. of Sci. & Eng., Tokyo Inst. of Technol.
Abstract :
This paper describes a statistical approach for modeling and synthesizing human walking motion. In the approach, each motion primitive is modeled statistically from motion capture data using multiple regression hidden semi-Markov model (HSMM). HSMM is an extension of hidden Markov model (HMM), in which each state has an explicit state duration probability distribution, and multiple regression HSMM is the one whose mean parameter of probability distribution function is assumed to be given by a function of factors which affects human motion. In this paper, we introduce a training algorithm for the multiple regression HSMM, called factor adaptive training based on the EM algorithm and also describe a parameter generation algorithm from motion primitive HSMMs with prescribed values of factors. From experimental results, we show that the proposed technique can control walking movements in accordance with a change of the factors such as walking pace and stride length and can provide realistic human motion
Keywords :
expectation-maximisation algorithm; hidden Markov models; motion estimation; regression analysis; expectation-maximization algorithm; factor adaptive training; hidden semi-Markov model; human motion; human walking motion synthesis; motion capture data; motion primitive; multiple regression; parameter generation algorithm; state duration probability distribution; training algorithm; Control system synthesis; Hidden Markov models; Human computer interaction; Legged locomotion; Motion control; Principal component analysis; Probability distribution; Shape; Signal processing algorithms; Signal synthesis;
Conference_Titel :
Cyberworlds, 2005. International Conference on
Conference_Location :
Singapore
Print_ISBN :
0-7695-2378-1