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首页> 外文期刊>Computational intelligence and neuroscience >Enhanced Detection of Visual-Evoked Potentials in Brain-Computer Interface Using Genetic Algorithm and Cyclostationary Analysis
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Enhanced Detection of Visual-Evoked Potentials in Brain-Computer Interface Using Genetic Algorithm and Cyclostationary Analysis

机译:利用遗传算法和循环平稳分析增强对脑-机界面视觉诱发电位的检测

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We propose a novel framework to reduce background electroencephalogram (EEG) artifacts from multitrial visual-evoked potentials (VEPs) signals for use in brain-computer interface (BCI) design. An algorithm based on cyclostationary (CS) analysis is introduced to locate the suitable frequency ranges that contain the stimulus-related VEP components. CS technique does not require VEP recordings to be phase locked and exploits the intertrial similarities of the VEP components in the frequency domain. The obtained cyclic frequency spectrum enables detection of VEP frequency band. Next, bandpass or lowpass filtering is performed to reduce the EEG artifacts using these identified frequency ranges. This is followed by overlapping band EEG artifact reduction using genetic algorithm and independent component analysis (G-ICA) which uses mutual information (MI) criterion to separate EEG artifacts from VEP. The CS and GA methods need to be applied only to the training data; for the test data, the knowledge of the cyclic frequency bands and unmixing matrix would be sufficient for enhanced VEP detection. Hence, the framework could be used for online VEP detection. This framework was tested with various datasets and it showed satisfactory results with very few trials. Since the framework is general, it could be applied to the enhancement of evokedpotential signals for any application.
机译:我们提出了一种新颖的框架,以减少用于脑机接口(BCI)设计的多重审判视觉诱发电位(VEP)信号中的背景脑电图(EEG)伪影。引入了基于循环平稳(CS)分析的算法来定位包含与刺激相关的VEP分量的合适频率范围。 CS技术不需要将VEP记录锁相,并且可以利用VEP分量在频域中的相似性。所获得的循环频谱使得能够检测VEP频带。接下来,使用这些已识别的频率范围执行带通或低通滤波以减少EEG伪影。接下来是使用遗传算法和独立成分分析(G-ICA)的重叠频带EEG伪影减少,该独立成分分析使用互信息(MI)标准将EEG伪影与VEP分开。 CS和GA方法仅需要应用于训练数据;对于测试数据,循环频带和解混矩阵的知识足以增强VEP检测。因此,该框架可用于在线VEP检测。该框架已通过各种数据集进行了测试,并通过很少的试验就显示出令人满意的结果。由于该框架是通用的,因此可以将其应用于任何应用中诱发电位信号的增强。

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