Yin Erwei, Zeyl Timothy, Saab Rami, Chau Tom, Hu Dewen, Zhou Zongtan
IEEE Trans Neural Syst Rehabil Eng. 2015 Jul;23(4):693-701. doi: 10.1109/TNSRE.2015.2403270. Epub 2015 Feb 20.
The present study proposes a hybrid brain-computer interface (BCI) with 64 selectable items based on the fusion of P300 and steady-state visually evoked potential (SSVEP) brain signals. With this approach, row/column (RC) P300 and two-step SSVEP paradigms were integrated to create two hybrid paradigms, which we denote as the double RC (DRC) and 4-D spellers. In each hybrid paradigm, the target is simultaneously detected based on both P300 and SSVEP potentials as measured by the electroencephalogram. We further proposed a maximum-probability estimation (MPE) fusion approach to combine the P300 and SSVEP on a score level and compared this approach to other approaches based on linear discriminant analysis, a naïve Bayes classifier, and support vector machines. The experimental results obtained from thirteen participants indicated that the 4-D hybrid paradigm outperformed the DRC paradigm and that the MPE fusion achieved higher accuracy compared with the other approaches. Importantly, 12 of the 13 participants, using the 4-D paradigm achieved an accuracy of over 90% and the average accuracy was 95.18%. These promising results suggest that the proposed hybrid BCI system could be used in the design of a high-performance BCI-based keyboard.
本研究基于P300和稳态视觉诱发电位(SSVEP)脑电信号的融合,提出了一种具有64个可选项目的混合脑机接口(BCI)。通过这种方法,将行/列(RC)P300和两步SSVEP范式整合在一起,创建了两种混合范式,我们将其称为双RC(DRC)和4-D拼写器。在每种混合范式中,基于脑电图测量的P300和SSVEP电位同时检测目标。我们还提出了一种最大概率估计(MPE)融合方法,在得分水平上结合P300和SSVEP,并将该方法与基于线性判别分析、朴素贝叶斯分类器和支持向量机的其他方法进行了比较。从13名参与者获得的实验结果表明,4-D混合范式优于DRC范式,并且MPE融合与其他方法相比实现了更高的准确率。重要的是,13名参与者中有12名使用4-D范式的准确率超过了90%,平均准确率为95.18%。这些令人鼓舞的结果表明,所提出的混合BCI系统可用于设计基于BCI的高性能键盘。