EMGFlow is the first application of flow matching to synthesize sEMG data, outperforming GAN and diffusion baselines in fidelity, distributional metrics, and downstream gesture recognition utility under TSTR evaluation.
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EMGFlow: Robust and Efficient Surface Electromyography Synthesis via Flow Matching
EMGFlow is the first application of flow matching to synthesize sEMG data, outperforming GAN and diffusion baselines in fidelity, distributional metrics, and downstream gesture recognition utility under TSTR evaluation.