脑电图和情绪:α-峰值频率作为幸福的量词

Syed Syahril, K. S. Subari, N. N. Ahmad
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引用次数: 1

摘要

本研究探讨脑电图(EEG)信号与人类基本情绪之间的关系。在第一个实验中,采集4名男性和4名女性受试者在视听刺激下Fp1、Fp2、F3和F4位置的脑电信号。这些刺激物被选择用来唤起4组情绪,即悲伤、恐惧、快乐和厌恶。然后使用一种新的改进经验模态分解(EMD)技术对信号进行处理以去除伪影。随后,利用改进的Welch周期图技术从无伪影的脑电图中获得α和β波段的频谱特征,重点是寻找最佳Welch段数和历元长度。从第一个实验中得出的假设随后在另外7名男性受试者身上进行了测试。研究发现,男性受试者的α-峰频率始终是幸福诱发情绪的最高频率。基于这一观察,我们推测α-峰值频率可以用来量化一个人所经历的幸福水平。
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EEG and emotions: α-peak frequency as a quantifier for happiness
This research investigates the relationship between the electroencephalography (EEG) signal and basic human emotions. In the first experiment, EEG signals were collected from electrodes at locations Fp1, Fp2, F3 and F4 from 4 male and 4 female test subjects while exposed to audio-visual stimuli. The stimuli were selected to evoke 4 groups of emotions i.e., sad, fear, happiness and disgust. The signals were then processed to remove artifacts using a novel modified empirical mode decomposition (EMD) technique. Subsequently, spectral features derived from the α- and β-bands were derived from the artifact-free EEG using a modified Welch periodogram technique with emphasis on finding the optimum number of Welch segments and epoch length. The hypothesis derived from the first experiment was subsequently tested on an additional 7 male subjects. It was observed that the α-peak frequency consistently had the highest magnitudes for happiness-evoked emotion for male subjects. Based on this observation, we speculate that the α-peak frequency can be used to quantify the level of happiness experienced by an individual.
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