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EOG Artifacts Removal in EEG Measurements for Affective Interaction with Brain Computer Interface

机译:脑电测量中的EOG伪影去除,用于与大脑计算机接口的情感交互

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A brain-computer interface (BCI) is a direct link between the brain and a computer. Multi-modal input with BCI forms a promising solution for creating rich gaming experience. Electroencephalography (EEG) measurement is the sole necessary component for a BCI system. EEG signals have the characteristics of large amount, multiple channels and sensitive to noise. The amount of valuable information derived from EEG signals is dependent on both the amount of noises embedded in the original measurement and the algorithms selected for post processing. Therefore, artifacts removal in the preprocess step is crucial. Electrooculography (EOG) signals are one of the major artifacts that often appear in EEG measurement. In this paper, we compared two different algorithms (Recursive Least Square (RLS) and Blind Source Separation (BSS)) to investigate their performances on removing EOG artifacts from EEG signals. Results indicate that the performance of RLS algorithm is better than BSS algorithm no matter whether there are any EOG reference signals. For BSS algorithm, the performance is better when EOG reference signals are available. These results show that for a BCI system, EEG reference is often necessary. Performance will be sacrificed if an EEG system cannot have any EOG reference signals.
机译:脑机接口(BCI)是大脑和计算机之间的直接链接。 BCI的多模式输入为创造丰富的游戏体验提供了一个有前途的解决方案。脑电图(EEG)测量是BCI系统唯一必要的组件。脑电信号具有信号量大,通道多,对噪声敏感的特点。从EEG信号中获得的有价值信息的数量取决于原始测量中嵌入的噪声数量以及为后处理选择的算法。因此,在预处理步骤中去除伪影至关重要。眼电图(EOG)信号是EEG测量中经常出现的主要伪像之一。在本文中,我们比较了两种不同的算法(递归最小二乘(RLS)和盲源分离(BSS)),以研究它们在从EEG信号中去除EOG伪像的性能。结果表明,无论是否有EOG参考信号,RLS算法的性能均优于BSS算法。对于BSS算法,当EOG参考信号可用时,性能会更好。这些结果表明,对于BCI系统,经常需要EEG参考。如果EEG系统不能有任何EOG参考信号,则会牺牲性能。

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