Abstract:
Current studies for brain-muscle modulation often analyze selected properties in electrophysiological signals, leading to a partial understanding. This article proposes a...Show MoreMetadata
Abstract:
Current studies for brain-muscle modulation often analyze selected properties in electrophysiological signals, leading to a partial understanding. This article proposes a cross-modal generative model that converts brain activities measured by electroencephalography (EEG) to corresponding muscular responses recorded by electromyography (EMG). Examining the generation process in the model highlights how the motor cue, representing implicit motor information hidden within brain activities, modulates the interaction between brain and muscle systems. The proposed model employs a two-stage generation process to bridge the semantic gap in cross-modal signals. Initially, the shared movement-related information between EEG and EMG signals is extracted using a contrastive learning framework. These shared representations act as conditional vectors in the subsequent EMG generation stage based on generative adversarial networks (GANs). Experiments on a self-collected multimodal electrophysiological signal data set show the algorithm’s superiority over existing time series generative methods in cross-modal EMG generation. Further insights derived from the model’s inference process underscore the brain’s strategy for muscle control during movements. This research provides a data-driven approach for the neuroscience community, offering a comprehensive perspective of brain-muscular modulation.
Published in: IEEE Transactions on Cybernetics ( Volume: 55, Issue: 1, January 2025)
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- IEEE Keywords
- Index Terms
- Motion Cues ,
- Brain Activity ,
- Generation Process ,
- Generative Adversarial Networks ,
- EEG Signals ,
- Electromyography Signals ,
- Self-supervised Learning ,
- Electrophysiological Signals ,
- Motor Information ,
- Shared Representation ,
- Neuroscience Community ,
- Muscular Response ,
- Left Hemisphere ,
- EEG Data ,
- Raw Signal ,
- Representation Learning ,
- Latent Space ,
- Root Mean Square Values ,
- Sample Length ,
- Shared Space ,
- Wasserstein Generative Adversarial Networks ,
- Generated Time Series ,
- Dynamic Time Warping ,
- Latent Vector ,
- Gradient Penalty ,
- Multi-scale Convolutional Neural Network ,
- EEG Channels ,
- GAN-based Methods ,
- Muscular Activity ,
- Elbow Flexion
- Author Keywords
- MeSH Terms
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Motion Cues ,
- Brain Activity ,
- Generation Process ,
- Generative Adversarial Networks ,
- EEG Signals ,
- Electromyography Signals ,
- Self-supervised Learning ,
- Electrophysiological Signals ,
- Motor Information ,
- Shared Representation ,
- Neuroscience Community ,
- Muscular Response ,
- Left Hemisphere ,
- EEG Data ,
- Raw Signal ,
- Representation Learning ,
- Latent Space ,
- Root Mean Square Values ,
- Sample Length ,
- Shared Space ,
- Wasserstein Generative Adversarial Networks ,
- Generated Time Series ,
- Dynamic Time Warping ,
- Latent Vector ,
- Gradient Penalty ,
- Multi-scale Convolutional Neural Network ,
- EEG Channels ,
- GAN-based Methods ,
- Muscular Activity ,
- Elbow Flexion
- Author Keywords
- MeSH Terms