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Autori principali: Sun, Ye, Zhao, Bowei, Yao, Dezhong, Zhang, Rui, Zhang, Bohan, Li, Xiaoyuan, Wang, Jing, Qu, Mingxuan, Liu, Gang
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2507.22895
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author Sun, Ye
Zhao, Bowei
Yao, Dezhong
Zhang, Rui
Zhang, Bohan
Li, Xiaoyuan
Wang, Jing
Qu, Mingxuan
Liu, Gang
author_facet Sun, Ye
Zhao, Bowei
Yao, Dezhong
Zhang, Rui
Zhang, Bohan
Li, Xiaoyuan
Wang, Jing
Qu, Mingxuan
Liu, Gang
contents Motor brain-computer interfaces (BCIs) enable the control of external devices by decoding neural signals. However, most existing systems rely on a direct "brain-machine" mapping, overlooking the hierarchical physiological pathway of natural movement, namely the "brain-muscle-joint" cascade. Due to the lack of explicit modeling and enhancement of this pathway, current systems are often constrained by the low amplitude and high noise of EEG signals, resulting in motor outputs that are unstable, discontinuous, and insufficiently natural.To address these limitations, this study introduces the concept of a brain-muscle atlas, designed to systematically characterize the mapping between motor cortical activity and corresponding muscle activation, thereby establishing a movement decoding framework that better aligns with neuromuscular physiology. Using synchronously recorded EEG-EMG data, we constructed the first brain-muscle atlas for elbow flexion-extension, achieving a structured mapping from cortical activity to muscle activation.Offline experiments demonstrate that the proposed atlas accurately reconstructs the temporal activation patterns of primary elbow agonists, achieving a maximum correlation coefficient of 0.8314, thereby validating its ability to capture cortical-muscular mapping. Furthermore, by leveraging atlas-derived muscle activation representations, we enabled continuous real-time control of a virtual elbow joint. All ten participants successfully completed the online flexion-extension task, indicating that the system robustly extracts motor intent even under low-SNR EEG conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2507_22895
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Brain-Muscle Atlas: A novel framework for Motor Brain-Computer Interfaces
Sun, Ye
Zhao, Bowei
Yao, Dezhong
Zhang, Rui
Zhang, Bohan
Li, Xiaoyuan
Wang, Jing
Qu, Mingxuan
Liu, Gang
Human-Computer Interaction
Motor brain-computer interfaces (BCIs) enable the control of external devices by decoding neural signals. However, most existing systems rely on a direct "brain-machine" mapping, overlooking the hierarchical physiological pathway of natural movement, namely the "brain-muscle-joint" cascade. Due to the lack of explicit modeling and enhancement of this pathway, current systems are often constrained by the low amplitude and high noise of EEG signals, resulting in motor outputs that are unstable, discontinuous, and insufficiently natural.To address these limitations, this study introduces the concept of a brain-muscle atlas, designed to systematically characterize the mapping between motor cortical activity and corresponding muscle activation, thereby establishing a movement decoding framework that better aligns with neuromuscular physiology. Using synchronously recorded EEG-EMG data, we constructed the first brain-muscle atlas for elbow flexion-extension, achieving a structured mapping from cortical activity to muscle activation.Offline experiments demonstrate that the proposed atlas accurately reconstructs the temporal activation patterns of primary elbow agonists, achieving a maximum correlation coefficient of 0.8314, thereby validating its ability to capture cortical-muscular mapping. Furthermore, by leveraging atlas-derived muscle activation representations, we enabled continuous real-time control of a virtual elbow joint. All ten participants successfully completed the online flexion-extension task, indicating that the system robustly extracts motor intent even under low-SNR EEG conditions.
title Brain-Muscle Atlas: A novel framework for Motor Brain-Computer Interfaces
topic Human-Computer Interaction
url https://arxiv.org/abs/2507.22895