An improved model using convolutional sliding window-attention network for motor imagery EEG classification.

Yuxuan Huang, Jianxu Zheng, Binxing Xu,Xuhang Li,Yu Liu,Zijian Wang,Hua Feng,Shiqi Cao

Frontiers in neuroscience(2023)

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摘要
The experimental results also demonstrated that the proposed type token, sliding window, and local and global multi-head self-attention mechanisms can significantly improve the model's ability to construct, learn, and adaptively select multi-scale spatiotemporal features in MI-EEG signals, and accurately identify electroencephalogram signals in the unilateral motor area. This work provided a novel and accurate classification model for MI-EEG brain-computer interface tasks and proposed a feasible neural rehabilitation assessment scheme based on the model, which could promote the further development and application of MI-EEG methods in neural rehabilitation.
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关键词
EEG, motor imagery, brain computer interface, deep learning, CNN, attention
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