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.
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