SASG-DA: Sparse-Aware Semantic-Guided Diffusion Augmentation For Myoelectric Gesture Recognition
PositiveArtificial Intelligence
The recent publication of the SASG-DA method marks a significant advancement in myoelectric gesture recognition, a field crucial for enhancing human-machine interaction, especially in rehabilitation and prosthetic control. Traditional sEMG systems often struggle with a lack of informative training data, resulting in overfitting and poor generalization of deep learning models. The SASG-DA approach introduces a novel data augmentation technique that leverages Semantic Representation Guidance (SRG) to enhance the faithfulness of generated samples, while the Gaussian Modeling Semantic Sampling (GMSS) strategy allows for flexible and diverse sample generation. By addressing the challenges of data scarcity and promoting targeted diversity through Sparse-Aware Semantic Sampling, this method aims to improve the utility of generated samples, ultimately leading to better performance in gesture recognition tasks. Extensive experiments conducted on benchmark sEMG datasets, such as the Ninapro DB, …
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