Koopman-Driven Grip Force Prediction Through EMG Sensing

Loss of hand function due to conditions like stroke or multiple sclerosis impacts daily activities. Robotic rehabilitation provides tools to restore hand function, while surface electromyography (sEMG) enables the adaptation of the device’s force output to the user’s condition,...

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Main Authors: Tomislav Bazina, Ervin Kamenar, Maria Fonoberova, Igor Mezic
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Transactions on Neural Systems and Rehabilitation Engineering
Subjects:
Online Access:https://ieeexplore.ieee.org/document/11021574/
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author Tomislav Bazina
Ervin Kamenar
Maria Fonoberova
Igor Mezic
author_facet Tomislav Bazina
Ervin Kamenar
Maria Fonoberova
Igor Mezic
author_sort Tomislav Bazina
collection DOAJ
description Loss of hand function due to conditions like stroke or multiple sclerosis impacts daily activities. Robotic rehabilitation provides tools to restore hand function, while surface electromyography (sEMG) enables the adaptation of the device’s force output to the user’s condition, thus enhancing rehabilitation outcomes. This study focuses on accurately predicting grip force during medium wrap grasps using a single sEMG sensor pair, addressing the challenge of escalating sensor requirements. We conducted sEMG measurements on 13 subjects at two forearm positions, validating results with a hand dynamometer. Established flexible signal processing steps achieved high peak cross-correlations between the processed sEMG signal and grip force. Influential parameters were subsequently identified through sensitivity analysis. Leveraging a novel data-driven Koopman-based approach and problem-specific data lifting, we devised a method for the estimation and short-term prediction of grip force from processed sEMG signals. The method achieved a weighted mean absolute percentage error (wMAPE) of ~5.5% for grip force estimation and ~17.9% for 0.5-second predictions. The methodology proved robust regarding precise electrode positioning, as the effect of sensing position on error metrics was non-significant. The algorithm executes exceptionally fast, processing, estimating, and predicting a 0.5-second sEMG signal batch in just ~30 ms, facilitating real-time implementation.
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spelling doaj-art-6d4efb75b7ae4110b61a5feaebc7ffad2025-08-20T02:08:46ZengIEEEIEEE Transactions on Neural Systems and Rehabilitation Engineering1534-43201558-02102025-01-01332192220210.1109/TNSRE.2025.357611011021574Koopman-Driven Grip Force Prediction Through EMG SensingTomislav Bazina0https://orcid.org/0000-0003-3833-4420Ervin Kamenar1https://orcid.org/0000-0002-0921-5548Maria Fonoberova2https://orcid.org/0000-0001-5438-524XIgor Mezic3https://orcid.org/0000-0002-2873-9013Faculty of Engineering, University of Rijeka, Rijeka, CroatiaFaculty of Engineering, University of Rijeka, Rijeka, CroatiaAIMdyn, Inc., Santa Barbara, CA, USAAIMdyn, Inc., Santa Barbara, CA, USALoss of hand function due to conditions like stroke or multiple sclerosis impacts daily activities. Robotic rehabilitation provides tools to restore hand function, while surface electromyography (sEMG) enables the adaptation of the device’s force output to the user’s condition, thus enhancing rehabilitation outcomes. This study focuses on accurately predicting grip force during medium wrap grasps using a single sEMG sensor pair, addressing the challenge of escalating sensor requirements. We conducted sEMG measurements on 13 subjects at two forearm positions, validating results with a hand dynamometer. Established flexible signal processing steps achieved high peak cross-correlations between the processed sEMG signal and grip force. Influential parameters were subsequently identified through sensitivity analysis. Leveraging a novel data-driven Koopman-based approach and problem-specific data lifting, we devised a method for the estimation and short-term prediction of grip force from processed sEMG signals. The method achieved a weighted mean absolute percentage error (wMAPE) of ~5.5% for grip force estimation and ~17.9% for 0.5-second predictions. The methodology proved robust regarding precise electrode positioning, as the effect of sensing position on error metrics was non-significant. The algorithm executes exceptionally fast, processing, estimating, and predicting a 0.5-second sEMG signal batch in just ~30 ms, facilitating real-time implementation.https://ieeexplore.ieee.org/document/11021574/Koopman operator theoryelectromyographygrip force estimationrobotic rehabilitation
spellingShingle Tomislav Bazina
Ervin Kamenar
Maria Fonoberova
Igor Mezic
Koopman-Driven Grip Force Prediction Through EMG Sensing
IEEE Transactions on Neural Systems and Rehabilitation Engineering
Koopman operator theory
electromyography
grip force estimation
robotic rehabilitation
title Koopman-Driven Grip Force Prediction Through EMG Sensing
title_full Koopman-Driven Grip Force Prediction Through EMG Sensing
title_fullStr Koopman-Driven Grip Force Prediction Through EMG Sensing
title_full_unstemmed Koopman-Driven Grip Force Prediction Through EMG Sensing
title_short Koopman-Driven Grip Force Prediction Through EMG Sensing
title_sort koopman driven grip force prediction through emg sensing
topic Koopman operator theory
electromyography
grip force estimation
robotic rehabilitation
url https://ieeexplore.ieee.org/document/11021574/
work_keys_str_mv AT tomislavbazina koopmandrivengripforcepredictionthroughemgsensing
AT ervinkamenar koopmandrivengripforcepredictionthroughemgsensing
AT mariafonoberova koopmandrivengripforcepredictionthroughemgsensing
AT igormezic koopmandrivengripforcepredictionthroughemgsensing