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New Developments and Trends of BCI Based on Motor Imagery |
Zhao Xin#, Chen Zhitang, Wang Kun, Wang Zhongpeng, Zhou Peng#, Qi Hongzhi* |
Department of Biomedical Engineering,College of Precision Instruments and Optoelectronics Engineering,Tianjin University,Tianjin 300072,China |
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Abstract Brain-computer interface (BCI) based on motor imagery (MI) is a new rehabilitation method, which plays a significant role in helping to improve and restore physical functions of patients. However, MI-BCI still faces many challenges for practical application, including the low spatial resolution of physiological signals induced by MI, the long training time of users, and the difficulty in implementing an asynchronous control MI-BCI system. This paper briefly outlined the research of MI-related mechanisms, reviewed the relevant solutions and the research status from the aspects of signal acquisition, signal processing algorithm analysis, paradigm design and asynchronous control research. At last, we outlined the application and perspectives of MI-BCI in the future development.
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Received: 07 May 2018
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