Review of brain–computer interface based on steady‐state visual evoked potential

Siyu Liu, Deyu Zhang, Ziyu Liu, Mengzhen Liu, Zhiyuan Ming, Tiantian Liu, Dingjie Suo, S. Funahashi, Tianyi Yan
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引用次数: 3

Abstract

The brain–computer interface (BCI) technology has received lots of attention in the field of scientific research because it can help disabled people improve their quality of life. Steady‐state visual evoked potential (SSVEP) is the most researched BCI experimental paradigm, which offers the advantages of high signal‐to‐noise ratio and short training‐time requirement by users. In a complete BCI system, the two most critical components are the experimental paradigm and decoding algorithm. However, a systematic combination of the SSVEP experimental paradigm and decoding algorithms is missing in existing studies. In the present study, the transient visual evoked potential, SSVEP, and various improved SSVEP paradigms are compared and analyzed, and the problems and development bottlenecks in the experimental paradigm are finally pointed out. Subsequently, the canonical correlation analysis and various improved decoding algorithms are introduced, and the opportunities and challenges of the SSVEP decoding algorithm are discussed.
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基于稳态视觉诱发电位的脑机接口综述
脑机接口技术在科学研究领域受到了广泛关注,因为它可以帮助残疾人提高生活质量。稳态视觉诱发电位(SSVEP)是研究最多的脑机接口实验范式,具有信噪比高、用户训练时间短的优点。在一个完整的脑机接口系统中,两个最关键的组成部分是实验范式和解码算法。然而,在现有的研究中,SSVEP实验范式和解码算法的系统结合是缺失的。在本研究中,对瞬态视觉诱发电位、SSVEP和各种改进的SSVEP范式进行了比较和分析,并最终指出了实验范式中存在的问题和发展瓶颈。随后,介绍了正则相关分析和各种改进的解码算法,并讨论了SSVEP解码算法的机遇和挑战。
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来源期刊
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0.00%
发文量
27
审稿时长
10 weeks
期刊最新文献
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