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Real-time detection of P300 brain events: brain-computer interfaces for EEG-based communication aids

机译:p300大脑事件的实时检测:基于EEG的通信辅助的脑 - 计算机接口

摘要

This thesis aims to design a real-time EEG-based communication aid using brain-computer interface (BCI) technologies. The study evaluates the feasibility of using the Emotive headset as an affordable EEG input system that is suitable for daily usage under realistic conditions. A further objective of this research is to increase the spelling speed of the P300 Speller. Multiple-screen verbal and graphical versions of the spelling paradigm are introduced to increase the number of letters that can be spelled in a particular time period. The experiments were conducted using the OpenViBE platform on six participants. The xDAWN spatial filter was used to detect the activated area of the brain while the LDA and the SVM were employed to classify the data into target and non-target samples. In terms of Emotiv feasibility, this system has evidenced its capability to detect the P300 brain waves used as the control signals for the P300 BCI. The obtained accuracies are comparable to those presented in other studies in which expensive medical EEG recording systems were utilized. The users’ performance with the verbal and graphical versions of the speller is similar to the performance obtained when using the typical alphanumerical speller, although with higher spelling speed. Accordingly, the use of these new versions is highly recommended.The results show significant differences between individual users’ performance. The shape of their brain activity pattern recorded within 500 ms of the visual stimulation, which is used as a control signal, as well as other factors were considered. For most participants involved in this study, the target signals are remarkably distinguishable from the non-target ones; however, a case of BCI illiteracy is identified. To summarise, the interface performance is affected positively by higher amplitude of P300 brain waves and users’ motivation; however, it is affected negatively by loss of attention, motor movements and mental fatigue.
机译:本文旨在利用脑机接口(BCI)技术设计一种基于EEG的实时通信辅助工具。这项研究评估了将Emotive耳机用作价格合理的EEG输入系统的可行性,该系统适合在现实条件下的日常使用。这项研究的另一个目标是提高P300 Speller的拼写速度。引入了拼写范例的多屏语言和图形版本,以增加在特定时间段内可以拼写的字母的数量。实验是使用OpenViBE平台对六名参与者进行的。 xDAWN空间滤波器用于检测大脑的激活区域,而LDA和SVM用于将数据分类为目标样本和非目标样本。在Emotiv可行性方面,该系统已证明其具有检测用作P300 BCI控制信号的P300脑电波的能力。所获得的精确度与使用昂贵的医学EEG记录系统的其他研究所提供的精确度相当。尽管拼写速度更高,但使用拼写器的语言和图形版本的用户性能类似于使用典型字母数字拼写器时的性能。因此,强烈建议使用这些新版本。结果显示,各个用户的性能之间存在显着差异。考虑了在视觉刺激后500毫秒内记录的大脑活动模式的形状(用作控制信号)以及其他因素。对于参与这项研究的大多数参与者而言,目标信号与非目标信号是有明显区别的。但是,发现了BCI文盲案件。总而言之,P300脑电波的振幅更高和用户的动机会对界面性能产生积极影响;但是,注意力不集中,运动和精神疲劳会对身体产生负面影响。

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    Alkhater Rehab;

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  • 年度 2012
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