Spatial Information Enhances Myoelectric Control Performance With Only Two Channels

Authors:He Jiayuan; Sheng Xinjun; Zhu Xiangyang; Jiang Chaozhe*; Jiang Ning*
Source:IEEE Transactions on Industrial Informatics, 2019, 15(2): 1226-1233.
DOI:10.1109/TII.2018.2869394

Summary

Automatic gesture recognition (AGR) is investigated as an effortless human-machine interaction method, potentially applied in many industrial sectors. When using surface electromyogram (sEMG) for AGR, i.e., myoelectric control, a minimum of four EMG channels are required. However, in practical applications, fewer number of electrodes is always preferred, particularly for mobile and wearable applications. No published research focused on how to improve the performance of a myoelectric system with only two sEMG channels. In this study, we presented a systematic investigation to fill this gap. Specifically, we demonstrated that through spatial filtering and electrode position optimization, themyoelectric control performance was significantly improved (p < 0.05) and similar to that with four electrodes. Furthermore, we found a significant correlation between offline and online performance metrics in the two-channel system, indicating that offline performance was transferable to online performance, highly relevant for algorithm development for sEMG-based AGR applications.

  • Institution
    西南交通大学; 2; 上海交通大学; 1

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