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MoEMba: A Mamba-based Mixture of Experts for High-Density EMG-based Hand Gesture Recognition

Abstract

High-Density surface Electromyography (HDsEMG) has emerged as a pivotal resource for Human-Computer Interaction (HCI), offering direct insights into muscle activities and motion intentions. However, a significant challenge in practical implementations of HD-sEMG-based models is the low accuracy of inter-session and inter-subject classification. Variability between sessions can reach up to 40% due to the inherent temporal variability of HD-sEMG signals. Targeting this challenge, the paper introduces the MoEMba framework, a novel approach leveraging Selective StateSpace Models (SSMs) to enhance HD-sEMG-based gesture recognition. The MoEMba framework captures temporal dependencies and cross-channel interactions through channel attention techniques. Furthermore, wavelet feature modulation is integrated to capture multi-scale temporal and spatial relations, improving signal representation. Experimental results on the CapgMyo HD-sEMG dataset demonstrate that MoEMba achieves a balanced accuracy of 56.9%, outperforming its state-of-the-art counterparts. The proposed framework's robustness to session-to-session variability and its efficient handling of high-dimensional multivariate time series data highlight its potential for advancing HD-sEMG-powered HCI systems.

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@article{shabanpour2025_2502.17457,
  title={ MoEMba: A Mamba-based Mixture of Experts for High-Density EMG-based Hand Gesture Recognition },
  author={ Mehran Shabanpour and Kasra Rad and Sadaf Khademi and Arash Mohammadi },
  journal={arXiv preprint arXiv:2502.17457},
  year={ 2025 }
}
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