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Employing subjects' information as privileged information for emotion recognition from EEG signals

机译:利用受试者的信息作为特权信息从EEG信号中识别情绪

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Current research of emotion recognition from electroencephalogram (EEG) signals rarely considers common patterns embodied in multiple subjects and individual patterns for each subject simultaneously. Therefore, in this paper, we propose a novel emotion recognition approach using subjects or subject groups as privileged information, which is only available during training. First, five frequency features are extracted from each channel of the EEG signals, and features are selected by statistical tests. Then, we propose two three-node Bayesian networks to capture the joint probability distribution function of emotion labels, EEG features, and subjects or subject groups during training. Through the learned joint probability distribution, the Bayesian networks model both common and individual emotion patterns simultaneously. During testing, emotion labels can be estimated from EEG features only by marginalized over the privileged information, i.e. subjects or subject groups. Experimental results on three benchmark databases, i.e. the MAHNOB-HCI database, the DEAP database and the USTC-ERVS database, demonstrate that our approach incorporating subjects and clusters achieves better emotion recognition performance than training a classifier for each subject, as well as training a classifier without subject information on the whole dataset.
机译:当前从脑电图(EEG)信号进行情感识别的研究很少考虑在多个对象中体现的共同模式和同时针对每个对象的个体模式。因此,在本文中,我们提出了一种新的情感识别方法,该方法将主题或主题组作为特权信息,仅在训练期间可用。首先,从EEG信号的每个通道中提取五个频率特征,然后通过统计测试选择特征。然后,我们提出了两个三节点贝叶斯网络来捕获训练过程中情绪标签,EEG特征以及受试者或受试者组的联合概率分布函数。通过学习的联合概率分布,贝叶斯网络可以同时对常见和个体的情绪模式进行建模。在测试期间,只能通过对特权信息(即主题或主题组)边缘化来从EEG功能估计情感标签。在三个基准数据库(即MAHNOB-HCI数据库,DEAP数据库和USTC-ERVS数据库)上的实验结果表明,与针对每个主题训练分类器以及对每个主题进行训练相比,结合主题和聚类的方法实现了更好的情感识别性能。在整个数据集中没有主题信息的分类器。

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