Evaluation of Hand Action Classification Performance Using Machine Learning Based on Signals from Two sEMG Electrodes
Hope O. Shaw,
Kirstie M. Devin,
Jinghua Tang
et al.
Abstract:Classification-based myoelectric control has attracted significant interest in recent years, leading to prosthetic hands with advanced functionality, such as multi-grip hands. Thus far, high classification accuracies have been achieved by increasing the number of surface electromyography (sEMG) electrodes or adding other sensing mechanisms. While many prescribed myoelectric hands still adopt two-electrode sEMG systems, detailed studies on signal processing and classification performance are still lacking. In t… Show more
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