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Recognition of Positive, Negative and Neutral Emotions Using Brain Connectivity Patterns

机译:使用大脑连通性模式识别积极,消极和中性情绪

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There are various resources inside the brain. Brain activities are the result of these sources or the result of their connectivity. Therefore, any special emotion should also be the result of various connectivity chains among the brain's resources. Studying this connectivity chains could help us recognize the corresponding emotions. The aim of this paper is to find interaction patterns in positive, neutral and negative emotions, and to recognize different types of emotions. We have used DEAP data in this project. These datasets were gathered from 32 volunteers, half of whom were women. Playing different types of music, caused them to experience special emotions, and their brain signals were recorded simultaneously. Music videos belonged to three different classes: positive, neutral and negative. After preprocessing the signals, we have achieved the connectional characteristics among the various channels, including causal features in various delays. Utilizing Davis-Bouldin Method, we obtained the sub-group of the optimal features. To evaluate the obtained results, we used SVM and KNN clustering methods. The final classified results, describes more favorable performance of interactional patterns and show the fact that connectional features can classify the classes in two arousal and valence with accuracy %79.7 and %88.2 respectively, which had %6 and %12.54 increase with respect to other traditional features.
机译:大脑内部有各种资源。大脑活动是这些来源或它们相互联系的结果。因此,任何特殊的情感也应该是大脑资源之间各种连接链的结果。研究这种连接链可以帮助我们识别相应的情绪。本文的目的是在正面,中性和负面情绪中找到互动模式,并识别不同类型的情绪。我们在该项目中使用了DEAP数据。这些数据集来自32名志愿者,其中一半是女性。演奏不同类型的音乐,使他们体验特殊的情感,并同时记录他们的大脑信号。音乐录影带分为三个类别:正面,中性和负面。在对信号进行预处理之后,我们实现了各个通道之间的连接特性,包括各种延迟中的因果关系。利用Davis-Bouldin方法,我们获得了最佳特征的子组。为了评估获得的结果,我们使用了SVM和KNN聚类方法。最终的分类结果描述了交互模式的更佳性能,并显示了以下事实:连接特征可以将觉醒和化价分类为两个类别,准确度分别为%79.7和%88.2,相对于其他传统方法,其准确性分别提高了%6和%12.54特征。

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