Chaotic time series analysis of vision evoked EEG

N. Zhang, Hong Wang
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引用次数: 2

Abstract

To investigate the human brain activities for aesthetic processing, beautiful woman face picture and ugly buffoon face picture were applied. Twelve subjects were assigned the aesthetic processing task while the electroencephalogram (EEG) was recorded. Event-related brain potential (ERP) was required from the 32 scalp electrodes and the ugly buffoon picture produced larger amplitudes for the N1, P2, N2, and late slow wave components. Average ERP from the ugly buffoon picture were larger than that from the beautiful woman picture. The ERP signals shows that the ugly buffoon elite higher emotion waves than the beautiful woman face, because some expression is on the face of the buffoon. Then, chaos time series analysis was carried out to calculate the largest Lyapunov exponent using small data set method and the correlation dimension using G-P algorithm. The results show that the largest Lyapunov exponents of the ERP signals are greater than zero, which indicate that the ERP signals may be chaotic. The correlations dimensions coming from the beautiful woman picture are larger than that from the ugly buffoon picture. The comparison of the correlations dimensions shows that the beautiful face can excite the brain nerve cells. The research in the paper is a persuasive proof to the opinion that cerebrum's work is chaotic under some picture stimuli.
视觉诱发脑电图的混沌时间序列分析
以美女面孔图片和丑角面孔图片为研究对象,研究了人脑的审美加工活动。12名被试被分配审美加工任务并记录脑电图。在32个头皮电极上进行事件相关脑电位(ERP)检测,丑陋的小丑图像对N1、P2、N2和晚慢波分量产生较大的振幅。丑角图片中的平均ERP比美女图片中的大。ERP信号显示,丑小丑精英的情绪波高于美女,因为小丑的脸上有某种表情。然后进行混沌时间序列分析,采用小数据集法计算最大Lyapunov指数,采用G-P算法计算相关维数。结果表明,ERP信号的最大Lyapunov指数大于零,表明ERP信号可能是混沌的。美女图片的相关维度大于丑角图片的相关维度。相关维度的比较表明,美丽的面孔可以刺激大脑神经细胞。本文的研究有力地证明了在某些图像刺激下大脑的工作是混乱的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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