Muscle Anatomy-aware Geometric Deep Learning for sEMG-based Gesture Decoding
Adyasha Dash, Giulia Zappoli, Laya Das, Robert Riener

TL;DR
This paper introduces a geometric deep learning model on SPD manifolds for sEMG gesture decoding, improving robustness and generalization across sessions and subjects, surpassing existing methods.
Contribution
It proposes a novel manifold-based deep learning approach with domain adaptation and session-specific normalization for improved sEMG gesture recognition.
Findings
Outperforms existing methods in inter-session accuracy.
Learns muscle-specific features effectively.
Reduces need for re-calibration across sessions.
Abstract
Robust and accurate decoding of gesture from non-invasive surface electromyography (sEMG) is important for various applications including spatial computing, healthcare, and entertainment, and has been actively pursued by researchers and industry. Majority of sEMG-based gesture decoding algorithms employ deep neural networks that are designed for Euclidean data, and may not be suitable for analyzing multi-dimensional, non-stationary time-series with long-range dependencies such as sEMG. State-of-the-art sEMG-based decoding methods also demonstrate high variability across subjects and sessions, requiring re-calibration and adaptive fine-tuning to boost performance. To address these shortcomings, this work proposes a geometric deep learning model that learns on symmetric positive definite (SPD) manifolds and leverages unsupervised domain adaptation to desensitize the model to subjects and…
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Taxonomy
TopicsMuscle activation and electromyography studies · Advanced Sensor and Energy Harvesting Materials · Hand Gesture Recognition Systems
