Author:
Liu Du-Xin,Wu Xinyu,Du Wenbin,Wang Can,Chen Chunjie,Xu Tiantian
Abstract
Purpose
The purpose of this paper is to model and predict suitable gait trajectories of lower-limb exoskeleton for wearer during rehabilitation walking. Lower-limb exoskeleton is widely used for assisting walk in rehabilitation field. One key problem for exoskeleton control is to model and predict suitable gait trajectories for wearer.
Design/methodology/approach
In this paper, the authors propose a Deep Spatial-Temporal Model (DSTM) for generating knee joint trajectory of lower-limb exoskeleton, which first leverages Long-Short Term Memory framework to learn the inherent spatial-temporal correlations of gait features.
Findings
With DSTM, the pathological knee joint trajectories can be predicted based on subject’s other joints. The energy expenditure is adopted for verifying the effectiveness of new recovery gait pattern by monitoring dynamic heart rate. The experimental results demonstrate that the subjects have less energy expenditure in new recovery gait pattern than in others’ normal gait patterns, which also means the new recovery gait is more suitable for subject.
Originality/value
Long-Short Term Memory framework is first used for modeling rehabilitation gait, and the deep spatial–temporal relationships between joints of gait data can obtained successfully.
Subject
Industrial and Manufacturing Engineering,Control and Systems Engineering
Reference34 articles.
1. Carrier, P.L. and Chohttp, K. (2017), “LSTM networks for sentiment analysis”, available at: http://deeplearning.net/tutorial/lstm.html
2. Lower extremity exoskeletons and active orthoses: challenges and state-of-the-art;IEEE Transactions on Robotics,2008
3. Hierarchical recurrent neural network for skeleton based action recognition,2015
4. Learning to forget: continual prediction with LSTM;Neural Computation,2000
5. Use of heart rate to predict energy expenditure from low to high activity levels;International Journal of Sports Medicine,2003
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