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Exploring EEG microstates for affective computing: decoding valence and arousal experiences during video watching*

机译:探索用于情感计算的EEG微状态:视频观看期间的解码价和唤醒体验*

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Investigating the electroencephalography (EEG) correlates of human emotional experiences has attracted increasing interest in the field of affective computing. Substantial progress has been made during the past decades, mainly by using EEG features extracted from localized brain activities. The present study explored a brain network-based feature defined by EEG microstates for a possible representation of emotional experiences. A publicly available and widely used benchmarking EEG dataset called DEAP was used, in which 32 participants watched 40 one-minute music videos with their 32channel EEG recorded. Four quasi-stable prototypical microstates were obtained, and their temporal parameters were extracted as features. In random forest regression, the microstate features showed better performances for decoding valence (model fitting mean squared error (MSE) = 3.85±0.28 and 4.07 ± 0.30, respectively, p = 0.022) and comparable performances for decoding arousal (MSE = 3.30±0.30 and 3.41 ±0.31, respectively, p = 0.169), as compared to conventional spectral power features. As microstate features describe neural activities from a global spatiotemporal dynamical perspective, our findings demonstrate a possible new mechanism for understanding human emotion and provide a promising type of EEG feature for affective computing.
机译:研究人类情感体验的脑电图(EEG)相关性已在情感计算领域引起了越来越多的兴趣。在过去的几十年中,已经取得了实质性的进展,主要是通过使用从局部大脑活动中提取的脑电图特征。本研究探索了由脑电图微状态定义的基于大脑网络的功能,以表达情感体验。使用了称为DEAP的公开可用且广泛使用的基准EEG数据集,其中32位参与者观看了40个一分钟的音乐视频,并记录了其32通道EEG。获得了四个准稳定的原型微状态,并提取了它们的时间参数作为特征。在随机森林回归中,微状态特征显示出更好的解码价性能(模型拟合均方误差(MSE)分别为3.85±0.28和4.07±0.30,p = 0.022),并具有与唤醒唤醒相似的性能(MSE = 3.30±0.30)与传统的频谱功率特性相比,分别为0.31和0.31±0.31(p = 0.169)。由于微状态特征从全局时空动力学角度描述了神经活动,因此我们的发现证明了一种可能的新机制,可用于理解人的情绪并为情感计算提供一种有前途的脑电特征。

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