Parallel Gaussian Processes for Gait and Phase Analysis 


Vol. 42,  No. 6, pp. 748-754, Jun.  2015


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  Abstract

This paper proposes a sequential state estimation model consisting of continuous and discrete variables, as a way of generalizing all discrete-state factorial HMM, and gives a design of gait motion model based on the idea. The discrete state variable implements a Markov chain that models the gait dynamics, and for each state of the Markov chain, we created a Gaussian process over the space of the continuous variable. The Markov chain controls the switching among Gaussian processes, each of which models the rotation or various views of a gait state. Then a particle filter-based algorithm is presented to give an approximate filtering solution. Given an input vector sequence presented over time, this finds a trajectory that follows a Gaussian process and occasionally switches to another dynamically. Experimental results show that the proposed model can provide a very intuitive interpretation of video-based gait into a sequence of poses and a sequence of posture states.


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  Cite this article

[IEEE Style]

B. Sin, "Parallel Gaussian Processes for Gait and Phase Analysis," Journal of KIISE, JOK, vol. 42, no. 6, pp. 748-754, 2015. DOI: .


[ACM Style]

Bong-Kee Sin. 2015. Parallel Gaussian Processes for Gait and Phase Analysis. Journal of KIISE, JOK, 42, 6, (2015), 748-754. DOI: .


[KCI Style]

신봉기, "보행 방향 및 상태 분석을 위한 병렬 가우스 과정," 한국정보과학회 논문지, 제42권, 제6호, 748~754쪽, 2015. DOI: .


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