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Motor-Unit Ordering of Blindly-Separated Surface-EMG Signals for Gesture Recognition

Orlandi, Mattia; Zanghieri, Marcello; Schiavone, Davide; Donati, Elisa; Conti, Francesco; Benatti, Simone (2022). Motor-Unit Ordering of Blindly-Separated Surface-EMG Signals for Gesture Recognition. In: Valle, Maurizio; et al. Advances in System-Integrated Intelligence : Proceedings of the 6th International Conference on System-Integrated Intelligence (SysInt 2022), September 7-9, 2022, Genova, Italy. Cham: Springer, 518-529.

Abstract

Hand gestures are one of the most natural and expressive way for humans to convey information, and thus hand gesture recognition has become a research hotspot in the human-machine interface (HMI) field. In particular, biological signals such as surface electromyography (sEMG) can be used to recognize hand gestures to implement intuitive control systems, but the decoding from the sEMG signal to actual control signals is non-trivial. Blind source separation (BSS)-based methods, such as convolutive independent component analysis (ICA), can be used to decompose the sEMG signal into its fundamental elements, the motor unit action potential trains (MUAPTs), which can then be processed with a classifier to predict hand gestures. However, ICA does not guarantee a consistent ordering of the extracted motor units (MUs), which poses a problem when considering multiple recording sessions and subjects; therefore, in this work we propose and validate three approaches to address this variability: two ordering criteria based on firing rate and negative entropy, and a re-calibration procedure, which allows the decomposition model to retain information about previous recording sessions when decomposing new data. In particular, we show that re-calibration is the most robust approach, yielding an accuracy up to 99.4%, and always greater than 85% across all the different scenarios that we tested. These results prove that our proposed system, which we publish open-source and which is based on biologically plausible features rather than on data-driven, black-box models, is capable of robust generalization.

Additional indexing

Item Type:Book Section, not_refereed, original work
Communities & Collections:07 Faculty of Science > Institute of Neuroinformatics
Dewey Decimal Classification:570 Life sciences; biology
Scopus Subject Areas:Physical Sciences > Control and Systems Engineering
Physical Sciences > Signal Processing
Physical Sciences > Computer Networks and Communications
Language:English
Date:4 September 2022
Deposited On:26 Feb 2023 09:57
Last Modified:23 Mar 2025 04:36
Publisher:Springer
Series Name:Lecture Notes in Networks and Systems (LNNS)
Number:546
ISSN:2367-3370
ISBN:978-3-031-16280-0
OA Status:Closed
Publisher DOI:https://doi.org/10.1007/978-3-031-16281-7_49
Other Identification Number:Online ISBN: 978-3-031-16281-7
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