A Large Clinical Study on the Ability of Stroke Patients to Use an EEG-Based Motor Imagery Brain-Computer Interface
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Cuntai Guan | K. Ang | K. Chua | B. Ang | C. Kuah | C. Wang | K. Phua | Z. Chin | Haihong Zhang
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