Abstract

In order to improve recognition accuracies of hand multi-movement patterns, we investigate a feature extraction method based on sparse representation technique. As a new tool, sparse Bayesian learning (SBL) algorithm is adopted to reveal the hidden nonstationary characteristics of surface electromyography (sEMG) during multiple different wrist, hand and finger movements. In the experiment on classifying these movements for fifteen participants, the feature we proposed has the optimal class separability. It can effectively distinguish multiple different hand movements. The average correct recognition rate of ten movements is up to 89.40%. Meanwhile, Davies-Bouldlin index (DBI) is applied to evaluate the performance of proposed method for identifying hand multi-movement patterns. The experiment results suggest that the SBL based method is an effective tool to capture the hidden characteristics of sEMG signals during ten different movements. Using the proposed method, the performance of myoelectric pattern recognition is enhanced.

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