Novel hybrid brain–computer interface system based on motor imagery and P300
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Andrzej Cichocki | Erwei Yin | Jing Jin | Xingyu Wang | Cili Zuo | Rami Saab | Yangyang Miao | Dewen Hu | A. Cichocki | D. Hu | Xingyu Wang | Jing Jin | E. Yin | R. Saab | Cili Zuo | Yangyang Miao
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