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sEMG based segmentation parameter influence on Hand gesture recognition using Deep Learning

Publication Type : Conference Paper

Publisher : IEEE

Source : IEEE SMARTGEN 2023 (Accepted and Presented)

Url : https://www.semanticscholar.org/paper/sEMG-Based-Segmentation-Parameter-Influence-for-Joseph-Pathinarupothi/bd2004f3c24998cbefda82d8ae231f9c3907ce0c

Campus : Amritapuri

Center : Amrita Center for Wireless Networks and Applications (AmritaWNA)

Year : 2023

Abstract : Hand gesture recognition based on surface electromyography (sEMG) is frequently utilised in artificial pros-theses, rehabilitation training, and human-computer interfaces. Although deep learning based classification of sEMG has yielded fairly acceptable outcomes, the process of sEMG signal segmentation is typically led by heuristics, and is an under-investigated problem with implications on optimal data size, model selection and real-time applications. Initially, we developed a 1D CNN model that distinguishes seven hand motions from multi-channel sEMG obtained using forearm positioned myo-sensor. We then present a detailed analysis of various segmentation parameters and how they affect the accuracy of categorising hand gestures. The observed F1-scores of the model highlights that smaller window size of 200 ms provides a better classification performance compared to larger window sizes, with possible performance stagnation beyond 1000 to 2000 ms. This finding potentially highlights that muscle activation for each gesture carry the imprint of that gesture, even early in the action, and hence not requiring large windows for final classification while using deep learning techniques.

Cite this Research Publication : sEMG based segmentation parameter influence on Hand gesture recognition using Deep Learning IEEE SMARTGEN 2023 (Accepted and Presented)
Authors: Preetha Joseph, Rahul Krishnan Pathinarupothi, Ravi Sankaran

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