AI RESEARCH

Learning Generalizable Action Representations via Pre-training AEMG

arXiv CS.LG

ArXi:2605.03462v1 Announce Type: new A fundamental role in decoding human motor intent and enabling intuitive human-computer interaction is played by electromyography (EMG). However, its generalization capability across subjects, devices, and tasks remains substantially limited by data heterogeneity, label scarcity, and the lack of a unified representational framework. To bridge this gap, we propose Any Electromyography (AEMG), the first large-scale, self-supervised representation learning framework for