Using Bayesian Networks with Human Personality and Situation Information to Detect Emotion States from EEG

Xinan Fan, Luzheng Bi, Hongsheng Ding
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Abstract

Emotional interaction is an important aspect of the interaction between humans and robots. Further, emotion affects a variety of cognitive processes and thus might leads to accidents. Finding ways to recognize emotion of humans has received a great deal of research attention. In this paper, the recognition model of multi-emotion states from electroencephalogram (EEG) is proposed based on Bayesian Networks with human personality and situation information as causes. Several kinds of emotion states were elicited with videos and EEG signals from fourteen channels were acquired. Experimental results from six subjects suggest that the proposed model have good performance, indicating the feasibility of using EEG to detect multi-emotion states.
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基于人的个性和情境信息的贝叶斯网络检测脑电图的情绪状态
情感互动是人与机器人互动的一个重要方面。此外,情绪影响各种认知过程,因此可能导致事故。寻找识别人类情感的方法已经受到了大量的研究关注。基于贝叶斯网络,以人的个性和情境信息为原因,提出了基于贝叶斯网络的脑电图多情绪状态识别模型。通过视频诱发多种情绪状态,获取14个通道的脑电信号。6个被试的实验结果表明,该模型具有良好的性能,表明了利用脑电检测多情绪状态的可行性。
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