2024
DOI: 10.3389/fnins.2024.1329411
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Machine learning for hand pose classification from phasic and tonic EMG signals during bimanual activities in virtual reality

Cédric Simar,
Martin Colot,
Ana-Maria Cebolla
et al.

Abstract: Myoelectric prostheses have recently shown significant promise for restoring hand function in individuals with upper limb loss or deficiencies, driven by advances in machine learning and increasingly accessible bioelectrical signal acquisition devices. Here, we first introduce and validate a novel experimental paradigm using a virtual reality headset equipped with hand-tracking capabilities to facilitate the recordings of synchronized EMG signals and hand pose estimation. Using both the phasic and tonic EMG co… Show more

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