2023
DOI: 10.1101/2023.06.03.543591
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Movement Recognition via Channel-Activation-Wise sEMG Attention

Abstract: Context: Surface electromyography (sEMG) signals contain rich information recorded from muscle movements and therefore reflect the user's intention. sEMG has seen dominant applications in reha- bilitation, clinical diagnosis as well as human engineering, etc. However, current feature extraction methods for sEMG signals have been seriously limited by their stochasticity, transiency, and non-stationarity. Objective: Our objective is to combat the difficulties induced by the aforementioned downsides of sEMG and t… Show more

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