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Automation of Emotion Quadrant Identification by Using Second Order Difference Plots and Support Vector Machines

机译:使用二阶差异绘图和支持向量机的情感象限识别自动化

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EEG can reveal the real internal emotion of the subject, as it is a non-invasive way of capturing the brain waves and can't be affected by pretension or denial. This has made EEG a reliable source for research on emotion in current times, as it cannot be disguised. It captures the brain activations, mapping the brain states representing different emotional states directly [1]. Emotion recognition from EEG signals is a very cost-effective method to monitor the general wellbeing of individuals, employees of an organization or to cater to patients of mental health. Such a dataset is DEAP - Database for Emotion Analysis using Physiological signals, which is available online for academic research purposes [2]. In DEAP emotional dataset, brain signals of 32 volunteers, captured as they viewed 40 music videos of 1-minute duration each, are categorized on the quadrant of valence, arousal, dominance and liking, which signifies how they are associated with different emotions. The overview of the dataset used for experimentation is as shown in Figure 1.
机译:脑电图可以揭示对象的真正内部情绪,因为它是捕获脑波的非侵入性方式,不能受到预感或否定的影响。这使得EEG成为当前情绪的可靠来源,因为它不能伪造。它捕获了大脑激活,将代表不同情绪状态的脑状态直接映射[1]。来自EEG信号的情感识别是监测个人,组织员工的一般福祉的一种非常具有成本效益的方法,或者迎合心理健康患者。这样的数据集是Deap - 使用生理信号进行情感分析的数据库,可用于学术研究目的在线提供[2]。在DEAP情绪数据集中,32名志愿者的大脑信号,捕获了他们在每个持续时间的40个音乐视频中捕获,分类在价值,唤醒,统治和喜欢的象限上,这表示如何与不同的情绪相关。用于实验的数据集的概述如图1所示。

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