A Review of Research Progress of Hybrid Brain-Computer Interface
Shi Wenqiang1, Xiao Xiaolin1, Liu Shuang1, Xu Minpeng1,2, He Feng1,2*, Ming Dong1,2#
1(School of Precision Instrument and Opto-electronics Engineering, Tianjin University, Tianjin 300072, China) 2(Academy of Medical Engineering and Translational Medicine, Tianjin University, Tianjin 300072, China)
Abstract:Traditional brain-computerinterface (BCI) has many shortcomings in practical applications, such as a small instruction set, a small range of people, hard to achieve multi-dimensional control and asynchronous control. Hybrid Brain-Computer Interface (hBCI) can effectively solve these problems. In this paper, three common types of hBCI were reviewed, including hBCI based on EEG signals, hBCI based on EEG signals and other brain signals, and hBCI based on multiple physiological signals. In addition, this paper focused on the research status of hBCI systems and analyzed the stimulus paradigm, control strategy, classification performance, and practical application. The analysis results showed that compared with the traditional BCI system, the hBCI system has a much larger instruction set and higher accuracy. Moreover, due to the combination of other brain signals or physiological signals, hBCI is easier to realize multi-dimensional control and asynchronous control and has achieved rapid development in the utility performance of the system. Finally, this paper summarized different types of hBCI systems and proposed existing problems and future development prospects of hBCI.
施文强, 肖晓琳, 刘爽, 许敏鹏, 何峰, 明东. 混合范式脑-机接口研究进展综述[J]. 中国生物医学工程学报, 2022, 41(1): 73-85.
Shi Wenqiang, Xiao Xiaolin, Liu Shuang, Xu Minpeng, He Feng, Ming Dong. A Review of Research Progress of Hybrid Brain-Computer Interface. Chinese Journal of Biomedical Engineering, 2022, 41(1): 73-85.
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