2022
DOI: 10.3389/fnbot.2022.979949
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Compound motion decoding based on sEMG consisting of gestures, wrist angles, and strength

Abstract: This study aimed to highlight the demand for upper limb compound motion decoding to provide a more diversified and flexible operation for the electromyographic hand. In total, 60 compound motions were selected, which were combined with four gestures, five wrist angles, and three strength levels. Both deep learning methods and machine learning classifiers were compared to analyze the decoding performance. For deep learning, three structures and two ways of label encoding were assessed for their training process… Show more

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