2022年世界机器人大赛基于ssvep的脑机接口识别方法综述:MATLAB本科组

Chengzhi Yi, Yuxuan Wu, Fan Ye, Xinchen Zhang, Jingjing Chen
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引用次数: 1

摘要

基于稳态视觉诱发电位(SSVEP)的拼写方法因其快速处理和在不同个体间的一致表现而成为当前脑机接口(BCI)系统中广泛采用的一种范式。与基于校准的SSVEP算法相反,无需校准的SSVEP算法提供了清晰直观的数学原理,使新手开发人员可以访问它们。在2022年世界机器人大赛(WRC)期间,本科生组的参与者利用各种方法在无校准设置下完成目标检测,并成功地使用MATLAB实现了算法。在最后的测试中,获胜的方法实现了198.94 bit /min的平均信息传输速率,在无校准的情况下,这是非常高的。本文介绍了所选方法的基本原理,并通过分析最终测试和离线实验的结果对其有效性进行了比较。此外,我们建议WRC的青少年比赛可以作为对研究和开发自己的BCI系统感兴趣的初学者的理想起点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Overview of recognition methods for SSVEP-based BCIs in World Robot Contest 2022: MATLAB undergraduate group
The steady-state visual evoked potential (SSVEP)-based speller has emerged as a widely adopted paradigm in current brain–computer interface (BCI) systems due to its rapid processing and consistent performance across different individuals. Calibration-free SSVEP algorithms, as opposed to their calibration-based counterparts, offer clear and intuitive mathematical principles, making them accessible to novice developers. During the World Robot Contest (WRC) 2022, participants in the undergraduate category utilized various approaches to accomplish target detection in the calibration-free setting, successfully implementing the algorithms using MATLAB. The winning approach achieved an average information transfer rate of 198.94 bits/min in the final test, which is notably high given the calibration-free scenario. This paper presents an introduction to the underlying principles of the selected methods, accompanied by a comparison of their effectiveness through analysis of results from both the final test and offline experiments. Additionally, we propose that the youth competition of WRC could serve as an ideal starting point for beginners interested in studying and developing their own BCI systems.
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