Title :
A Stochastic Framework for Movement Strategy Identification and Analysis
Author :
Choudry, M.U. ; Beach, T.A.C. ; Callaghan, Jack P. ; Kulic, Dana
Author_Institution :
Univ. of Waterloo, Waterloo, ON, Canada
fDate :
5/1/2013 12:00:00 AM
Abstract :
The human body has many biomechanical degrees of freedom, and thus, multiple movement strategies can be employed to execute a given task. Joint loading patterns and risk of injury are highly sensitive to the movement strategy employed. This paper develops a computational framework to automatically identify and recognize different movement strategies to perform a task from human motion data. A divisive clustering approach is developed to identify movement strategies. Hidden Markov models (HMMs) are trained with the clustered observation sequences to generate strategy-specific models that are improved iteratively by using the maximum likelihood to relocate sequences to the most suitable cluster. Differences in individual joint trajectories are compared across strategies using a stochastic distance measure. The proposed algorithm is compared against three existing algorithms - joint contribution vector, decision tree, and HMM-based agglomerative clustering. Experimental results indicate that the proposed approach performs better than existing algorithms to detect motion strategies and automatically determine the differences between the strategies.
Keywords :
biomechanics; decision trees; ergonomics; hidden Markov models; human factors; maximum likelihood estimation; pattern clustering; HMM-based agglomerative clustering; biomechanical degrees of freedom; clustered observation sequences; clustering approach; computational framework; decision tree; hidden Markov models; human body; human motion data; individual joint trajectory; injury risk; joint contribution vector; joint loading patterns; maximum likelihood; movement strategy analysis; movement strategy identification; stochastic distance measure; stochastic framework; strategy-specific models; Clustering; Motion control; Stochastic processes; Clustering; human motion analysis; stochastic models;
Journal_Title :
Human-Machine Systems, IEEE Transactions on
DOI :
10.1109/TSMC.2013.2251629