FatigueFormer: Static-Temporal Feature Fusion for Robust sEMG-Based Muscle Fatigue Recognition

arXiv cs.LG / 3/31/2026

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Key Points

  • The paper introduces FatigueFormer, a semi-end-to-end framework for sEMG-based muscle fatigue recognition that fuses saliency-guided feature separation with deep temporal modeling for better interpretability and generalization.
  • It uses parallel Transformer-based sequence encoders to capture static versus temporal feature dynamics separately, aiming to stay robust across different Maximum Voluntary Contraction (MVC) levels despite signal variability and low signal-to-noise ratio.
  • Experiments on a self-collected dataset of 30 participants across four MVC levels (20–80%) show state-of-the-art accuracy and strong generalization under mild fatigue.
  • The approach provides attention-based visualization of fatigue dynamics, allowing analysis of how feature groups and time windows contribute differently across MVC levels and better understanding of fatigue progression.

Abstract

We present FatigueFormer, a semi-end-to-end framework that deliberately combines saliency-guided feature separation with deep temporal modeling to learn interpretable and generalizable muscle fatigue dynamics from surface electromyography (sEMG). Unlike prior approaches that struggle to maintain robustness across varying Maximum Voluntary Contraction (MVC) levels due to signal variability and low SNR, FatigueFormer employs parallel Transformer-based sequence encoders to separately capture static and temporal feature dynamics, fusing their complementary representations to improve performance stability across low- and high-MVC conditions. Evaluated on a self-collected dataset spanning 30 participants across four MVC levels (20-80%), it achieves state-of-the-art accuracy and strong generalization under mild-fatigue conditions. Beyond performance, FatigueFormer enables attention-based visualization of fatigue dynamics, revealing how feature groups and time windows contribute differently across varying MVC levels, offering interpretable insight into fatigue progression.