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从 EEG 信号中探究自我诱导情绪识别的模式。

Investigating Patterns for Self-Induced Emotion Recognition from EEG Signals.

机构信息

China National Digital Switching System Engineering and Technological Research Center, Zhengzhou 450002, China.

Key Laboratory for NeuroInformation of Ministry of Education, School of Life Science and Technology, University of Electronic Science and Technology of China, Chengdu 611731, China.

出版信息

Sensors (Basel). 2018 Mar 12;18(3):841. doi: 10.3390/s18030841.

DOI:10.3390/s18030841
PMID:29534515
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5877378/
Abstract

Most current approaches to emotion recognition are based on neural signals elicited by affective materials such as images, sounds and videos. However, the application of neural patterns in the recognition of self-induced emotions remains uninvestigated. In this study we inferred the patterns and neural signatures of self-induced emotions from electroencephalogram (EEG) signals. The EEG signals of 30 participants were recorded while they watched 18 Chinese movie clips which were intended to elicit six discrete emotions, including joy, neutrality, sadness, disgust, anger and fear. After watching each movie clip the participants were asked to self-induce emotions by recalling a specific scene from each movie. We analyzed the important features, electrode distribution and average neural patterns of different self-induced emotions. Results demonstrated that features related to high-frequency rhythm of EEG signals from electrodes distributed in the bilateral temporal, prefrontal and occipital lobes have outstanding performance in the discrimination of emotions. Moreover, the six discrete categories of self-induced emotion exhibit specific neural patterns and brain topography distributions. We achieved an average accuracy of 87.36% in the discrimination of positive from negative self-induced emotions and 54.52% in the classification of emotions into six discrete categories. Our research will help promote the development of comprehensive endogenous emotion recognition methods.

摘要

目前大多数情感识别方法都是基于情感材料(如图像、声音和视频)诱发的神经信号。然而,神经模式在自我诱发情感识别中的应用尚未得到研究。在这项研究中,我们从脑电图(EEG)信号中推断出自我诱发情感的模式和神经特征。研究记录了 30 名参与者观看 18 个中文电影片段时的 EEG 信号,这些片段旨在引发六种离散的情感,包括喜悦、中性、悲伤、厌恶、愤怒和恐惧。观看完每个电影片段后,参与者被要求通过回忆每个电影的特定场景来自我诱发情绪。我们分析了不同自我诱发情绪的重要特征、电极分布和平均神经模式。结果表明,来自电极分布在双侧颞叶、前额叶和枕叶的 EEG 信号的高频节律特征在情绪识别方面表现出色。此外,六种离散的自我诱发情绪类别表现出特定的神经模式和脑区分布。我们在区分积极和消极自我诱发情绪方面达到了 87.36%的平均准确率,在将情绪分为六个离散类别方面达到了 54.52%的准确率。我们的研究将有助于促进综合内源性情感识别方法的发展。

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