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Adaptive EMG Pattern Classification via Probabilistic Knowledge Transfer With Scale Mixture-Based Bayesian Sequential

Seitaro Yoneda, Akira Furui

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    |July 14, 2025
    PubMed
    Summary
    This summary is machine-generated.

    This study introduces an adaptive method for electromyogram (EMG) signal classification, improving device control by integrating a scale mixture classification model (SMCM) with Bayesian sequential self-training (BSST). The method enhances accuracy and reliability in EMG-based interfaces, even with signal variations over time.

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    Area of Science:

    • Biomedical Engineering
    • Signal Processing
    • Machine Learning

    Background:

    • Electromyogram (EMG) signals are crucial for controlling devices like myoelectric prostheses.
    • Temporal variations in EMG signals due to factors like muscle fatigue and electrode shift degrade classification accuracy over time.
    • Existing EMG interfaces struggle with continuous adaptation to these signal changes.

    Purpose of the Study:

    • To develop an adaptive method for robust EMG signal classification.
    • To address the challenge of performance degradation in EMG-based interfaces.
    • To improve the reliability and accuracy of human-device interaction using EMG signals.

    Main Methods:

    • Integration of a scale mixture classification model (SMCM) with Bayesian sequential self-training (BSST).
    • Sequential updating of model parameters using Bayesian updates and pseudo-labels based on prediction confidence.
    • Utilizing SMCM for variance uncertainty modeling to represent EMG signal distributions and enhance confidence estimation.

    Main Results:

    • The proposed SMCM-BSST method demonstrated superior classification accuracy compared to conventional methods.
    • The method effectively mitigated accuracy degradation over short-term and long-term (30 days) datasets.
    • Improved reliability in prediction confidence estimation was observed.

    Conclusions:

    • The combination of SMCM and BSST offers effective adaptation to EMG signal variations.
    • This approach provides a practical solution for developing reliable and continuously performing EMG-based interfaces.
    • The study highlights the potential for advanced machine learning techniques to overcome limitations in bio-signal processing.