Literature DB >> 24211221

Statistical method for prediction of gait kinematics with Gaussian process regression.

Youngmok Yun1, Hyun-Chul Kim2, Sung Yul Shin2, Junwon Lee2, Ashish D Deshpande3, Changhwan Kim4.   

Abstract

We propose a novel methodology for predicting human gait pattern kinematics based on a statistical and stochastic approach using a method called Gaussian process regression (GPR). We selected 14 body parameters that significantly affect the gait pattern and 14 joint motions that represent gait kinematics. The body parameter and gait kinematics data were recorded from 113 subjects by anthropometric measurements and a motion capture system. We generated a regression model with GPR for gait pattern prediction and built a stochastic function mapping from body parameters to gait kinematics based on the database and GPR, and validated the model with a cross validation method. The function can not only produce trajectories for the joint motions associated with gait kinematics, but can also estimate the associated uncertainties. Our approach results in a novel, low-cost and subject-specific method for predicting gait kinematics with only the subject's body parameters as the necessary input, and also enables a comprehensive understanding of the correlation and uncertainty between body parameters and gait kinematics.
© 2013 Published by Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Gait pattern; Gaussian process regression; Statistics; Stochastic analysis

Mesh:

Year:  2013        PMID: 24211221     DOI: 10.1016/j.jbiomech.2013.09.032

Source DB:  PubMed          Journal:  J Biomech        ISSN: 0021-9290            Impact factor:   2.712


  8 in total

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  8 in total

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