Analysis of neural electrical activities during elicitation of human emotion based on EEG

G. Kashyap, Madhurjya Bora, Mehfishan Nishat, X. Cui, S. Pun, S. Barma
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引用次数: 4

Abstract

This work aims to analyze the neural electrical activity inside the brain during elicitation of human emotional states using Electroencephalographic (EEG) signal. Such analysis offers to understand the human emotional process in great details as earlier most of the works focused on either emotion recognition or its application only using EEG signal. To do so, firstly, the emotional states are categorized in dimensional space based on valence-arousal scores into four classes: high valence high arousal (HVHA), high valence low arousal (HVLA), low valence high arousal (LVHA), and low valence low arousal (LVLA) from the DEAP emotional dataset. The sLORETA tool has been used in this purpose, which can perform the source localization in 3D with current density estimation from the EEG signal, and functional connectivity based on coherence. The results show that the current density during HVHA, HVLA, LVHA, and LVLA are 1.8±0.51 µA/mm2, 3.7±1.1 µA/mm2, 2.5±1.2 µA/mm2, and 4.4±2.8 µA/mm2 respectively. Besides, the main active regions in cortical level during elicitation of different classes of emotions are: for HVHA, Brodmann areas 10 of superior frontal gyrus region of frontal lobe; for HVLA, Brodmann areas 6 of superior frontal gyrus region of frontal lobe; for LVHA, Brodmann areas 19 of cuneus region of occipital lobe; and for LVLA, Brodmann areas 40 of supramarginal gyrus region of parietal lobe. The results show that, for higher valence, the brain active regions in cortical level is same but the Brodmann areas are different. Such results suggest that there are different sets of neural active regions with different current densities for different classes of emotional states. Therefore, in future, more subjects including more trials and others parameters will be analyzed which could guide to understand intra-brain electrical neural activity with great details.
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基于脑电图的人类情绪激发过程中的神经电活动分析
本工作旨在利用脑电图(EEG)信号分析人类情绪状态激发过程中大脑内的神经电活动。这种分析可以更详细地了解人类的情绪过程,因为早期的大多数工作都集中在情绪识别或仅使用脑电图信号的应用上。首先,在维度空间上将DEAP情绪数据集中的情绪状态分为四类:高价位高唤醒(HVHA)、高价位低唤醒(HVLA)、低价位高唤醒(LVHA)和低价位低唤醒(LVLA)。sLORETA工具可以通过脑电信号的电流密度估计进行三维源定位,并基于相干性进行功能连接。结果表明,HVHA、HVLA、LVHA和LVLA的电流密度分别为1.8±0.51µA/mm2、3.7±1.1µA/mm2、2.5±1.2µA/mm2和4.4±2.8µA/mm2。此外,在不同类型情绪的激发过程中,皮层水平的主要活动区域为:对于HVHA,额叶上回的Brodmann区10;HVLA为额叶上回第6 Brodmann区;LVHA为枕叶楔叶第19 Brodmann区;LVLA为顶叶边缘上回40区Brodmann区。结果表明,对于高效价,大脑皮层水平的活动区域相同,但Brodmann区不同。这些结果表明,不同类型的情绪状态有不同的神经活动区域,具有不同的电流密度。因此,未来将分析更多的受试者,包括更多的试验和其他参数,这将有助于更详细地了解脑内电神经活动。
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