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Subject-Independent Emotion Recognition During Music Listening Based on EEG Using Deep Convolutional Neural Networks

机译:基于EEG的音乐聆听期间,基于EEG的主题的情感识别

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Emotion recognition during music listening using electroencephalogram (EEG) has gained more attention from researchers, recently. Many studies focused on accuracy on one subject while subject-independent performance evaluation was still unclear. In this paper, the objective is to create an emotion recognition model that can be applied to multiple subjects. By adopting convolutional neural networks (CNNs), advantage could be gained from utilizing information from electrodes and time steps. Using CNNs also does not need feature extraction which might leave out other related but unobserved features. CNNs with three to seven convolutional layers were deployed in this research. We measured their performance with a binary classification task for compositions of emotions including arousal and valence. The results showed that our method captured EEG signal patterns from numerous subjects by 10-fold cross validation with 81.54% and 86.87% accuracy from arousal and valence respectively. The method also showed a higher capability of generalization to unseen subjects than the previous method as can be observed from the results of leave-one-subject-out validation.
机译:使用脑电图(EEG)在音乐中听到的情感识别(EEG)最近从研究人员获得了更多的关注。许多研究专注于一个主题的准确性,而主题无关的绩效评估尚不清楚。在本文中,目标是创建一种可以应用于多个受试者的情感识别模型。通过采用卷积神经网络(CNNS),可以通过利用来自电极和时间步长的信息来获得优点。使用CNN也不需要特征提取,这可能会遗漏其他相关但未观察的功能。在这项研究中部署了具有三到七个卷积层的CNN。我们用二进制分类任务来衡量其表现,以适用于包括唤醒和价值的情绪组成。结果表明,我们的方法将来自众多受试者的EEG信号模式捕获10倍的交叉验证,分别从唤醒和价值的焦点和价值81.54%和86.87%的精度。该方法还表明,除了从休假结果验证的结果中可以观察到的前述对象的普遍性的概括能力较高。

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