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Learning Generalizable Action Representations via Pre-training AEMG

arXiv:2605.0346228.1
AI Analysis

This work addresses the lack of generalizable EMG representations for human-computer interaction, offering a unified framework that reduces data heterogeneity and label scarcity issues.

AEMG is a self-supervised representation learning framework for EMG that improves zero-shot cross-subject accuracy by 5.79-9.25% over six baselines and achieves >90% few-shot performance with only 5% of target user data, enabling generalization across subjects, devices, and tasks.

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 EMG. AEMG reconceptualizes neuromuscular dynamics linguistically, utilizing a novel Neuromuscular Contraction Tokenizer (NCT) to translate discrete muscle contractions into structural words and temporal activation patterns into coherent sentences. Furthermore, we compile the largest cross-device EMG signal vocabulary to date, enabling seamless transfer across arbitrary channel topologies and sampling rates. Experiments demonstrate that AEMG improves the zero-shot leave-one-subject-out (LOSO) accuracy by 5.79-9.25% compared to six state-of-the-art baselines, and achieves more than 90% few-shot adaptation performance with only 5% of target user data. Our work has proposed the concept of EMG signals as a cross-device physiological language, learned their grammar from massive amounts of data, and laid the groundwork for a single-training, universally applicable EMG foundation model.

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