Single trial analysis on saccade-related EEG signal

A. Funase, T. Yagi, A. Barros, A. Cichocki, I. Takumi
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引用次数: 2

Abstract

Electroencephalogram (EEG) related to fast eye movement (saccade), has been the subject of application oriented research by our group toward developing a brain-computer interface (BCI). Our goal is to develop novel BCI based on eye movements system employing EEG signals online. Most of the analysis of the saccade-related EEG data has been performed using ensemble averaging approaches. However, ensemble averaging is not suitable for BCI. In order to process raw EEG data in real time, we performed saccade-related EEG experiments and processed data by using the non-conventional fast ICA with reference signal (FICAR). Visually guided saccade tasks and auditorily guided saccade tasks were performed and the EEG signal generated in the saccade was recorded. As results, for single trail EEG data we have successfully extracted the desire ICs with recognition rate about 70%. In next steps, saccade-related EEG signals and saccade-related ICs in visually and auditorily guided saccade task are compared in the point of the latency between starting time of a saccade and time when a saccade-related EEG signal or an IC has maximum value and in the point of the peak scale where a saccade-related EEG signal or an IC has maximum value. As results, peak time when saccade-related ICs have maximum amplitude is earlier than peak time when saccade-related EEG signals have maximum amplitude. This is very important advantage for developing our BCI. However, S/N ratio in being processed by FICAR is not improved comparing S/N ratio in being processed by ensemble averaging.
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眼跳相关脑电信号的单次试验分析
与快速眼动(扫视)相关的脑电图(EEG)一直是本课题组在开发脑机接口(BCI)方面面向应用的研究课题。我们的目标是开发一种新的基于眼动的脑机接口系统。大多数与眼跳相关的脑电图数据的分析都是使用集合平均方法进行的。但是,集合平均法不适用于BCI。为了实时处理原始脑电数据,我们进行了与眼跳相关的脑电实验,并采用基于参考信号的非常规快速独立分量分析(FICAR)对数据进行了处理。分别进行视觉引导扫视任务和听觉引导扫视任务,记录扫视过程中产生的脑电图信号。结果表明,对于单尾EEG数据,我们成功地提取了期望ic,识别率约为70%。接下来,比较视觉和听觉引导下的扫视任务中与扫视相关的脑电图信号和与扫视相关的IC,在扫视开始时间与与扫视相关的脑电图信号或IC出现最大值的时间之间的延迟点,以及与扫视相关的脑电图信号或IC出现最大值的峰值点。结果表明,眼跳相关ic出现最大振幅时的峰值时间早于眼跳相关EEG信号出现最大振幅时的峰值时间。这是我们发展脑机接口的一个非常重要的优势。但是,FICAR处理后的信噪比与集合平均处理后的信噪比相比并没有提高。
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