Deep Muscle EMG construction using A Physics-Integrated Deep Learning approach
Electromyography (EMG)--based computational musculoskeletal modeling is a non-invasive method for studying musculotendon function, human movement, and neuromuscular control, providing estimates of internal variables like muscle forces and joint torques. However, EMG signals from deeper muscles are o...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
07.03.2025
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.2503.05201 |
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Summary: | Electromyography (EMG)--based computational musculoskeletal modeling is a
non-invasive method for studying musculotendon function, human movement, and
neuromuscular control, providing estimates of internal variables like muscle
forces and joint torques. However, EMG signals from deeper muscles are often
challenging to measure by placing the surface EMG electrodes and unfeasible to
measure directly using invasive methods. The restriction to the access of EMG
data from deeper muscles poses a considerable obstacle to the broad adoption of
EMG-driven modeling techniques. A strategic alternative is to use an estimation
algorithm to approximate the missing EMG signals from deeper muscle. A similar
strategy is used in physics-informed deep learning, where the features of
physical systems are learned without labeled data. In this work, we propose a
hybrid deep learning algorithm, namely the neural musculoskeletal model (NMM),
that integrates physics-informed and data-driven deep learning to approximate
the EMG signals from the deeper muscles. While data-driven modeling is used to
predict the missing EMG signals, physics-based modeling engraves the
subject-specific information into the predictions. Experimental verifications
on five test subjects are carried out to investigate the performance of the
proposed hybrid framework. The proposed NMM is validated against the joint
torque computed from 'OpenSim' software. The predicted deep EMG signals are
also compared against the state-of-the-art muscle synergy extrapolation (MSE)
approach, where the proposed NMM completely outperforms the existing MSE
framework by a significant margin. |
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DOI: | 10.48550/arxiv.2503.05201 |