脑电信号混沌特征与人脑高水平智力活动关系的研究。

Xingyuan Wang, Juan Meng, Guilin Tan, Lixian Zou
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引用次数: 35

摘要

利用一维和多维时间序列相空间重构技术和系统混沌定量判据规则,结合神经网络;对五种人类意识活动的脑电图信号(放松、乘法心算、字母的心理构成、想象三维物体绕轴旋转、想象数字在黑板上书写或擦除)进行分析、计算和排序。通过对5种意识活动脑电图信号的确定性、相位图、功率谱、近似熵、相关维数和李亚普诺夫指数的对比研究,得出以下结论:(1)确定性计算的统计结果表明,混沌特征可能存在于人的意识活动中,集中趋势测度(CTM)与相图一致,可以作为脑电图吸引子的划分方法。(2)功率谱分析表明,单个被试的意识形态基本一致,但不同意识活动的频率通道略有差异。(3)不同主体间的近似熵存在差异。在相同条件下,主体的近似熵越大,主体的创新能力越强。(4)相关维数和Lyapunov指数结果表明,分数维吸引子中存在人脑活动。(5)结合神经网络的非线性定量准则规则能很好地对不同类型的意识活动进行分类。分类结果表明,算术的意识活动比抽象的意识活动具有更好的分化程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Research on the relation of EEG signal chaos characteristics with high-level intelligence activity of human brain.

Research on the relation of EEG signal chaos characteristics with high-level intelligence activity of human brain.

Research on the relation of EEG signal chaos characteristics with high-level intelligence activity of human brain.

Research on the relation of EEG signal chaos characteristics with high-level intelligence activity of human brain.

Using phase space reconstruct technique from one-dimensional and multi-dimensional time series and the quantitative criterion rule of system chaos, and combining the neural network; analyses, computations and sort are conducted on electroencephalogram (EEG) signals of five kinds of human consciousness activities (relaxation, mental arithmetic of multiplication, mental composition of a letter, visualizing a 3-dimensional object being revolved about an axis, and visualizing numbers being written or erased on a blackboard). Through comparative studies on the determinacy, the phase graph, the power spectra, the approximate entropy, the correlation dimension and the Lyapunov exponent of EEG signals of 5 kinds of consciousness activities, the following conclusions are shown: (1) The statistic results of the deterministic computation indicate that chaos characteristic may lie in human consciousness activities, and central tendency measure (CTM) is consistent with phase graph, so it can be used as a division way of EEG attractor. (2) The analyses of power spectra show that ideology of single subject is almost identical but the frequency channels of different consciousness activities have slight difference. (3) The approximate entropy between different subjects exist discrepancy. Under the same conditions, the larger the approximate entropy of subject is, the better the subject's innovation is. (4) The results of the correlation dimension and the Lyapunov exponent indicate that activities of human brain exist in attractors with fractional dimensions. (5) Nonlinear quantitative criterion rule, which unites the neural network, can classify different kinds of consciousness activities well. In this paper, the results of classification indicate that the consciousness activity of arithmetic has better differentiation degree than that of abstract.

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