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Emotion assessing using valence-arousal evaluation based on peripheral physiological signals and support vector machine

机译:基于周围生理信号和支持向量机的价-情感评估进行情绪评估

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Emotion recognition becomes an investigated topic in affective computing for several applications. The presented paper aims to recognize human emotions using peripheral physiological signals as well as electrocardiogram (ECG), galvanic skin response (GSR), Skin Temperature (Temp) and respiration volume (RV). To achieve this purpose, we develop our work with the multimodal database MAHNOB-HCI. The emotional responses of twenty four participants to twenty affective stimuli videos are classified into two precise areas in valence-arousal emotional space. Using the support vector machine (SVM) as a classifier, the results, over the mentioned signals, show that the ECG and RV signals are the most relevant for emotion recognition issue. Moreover, our obtained accuracies are promising compared to related work.
机译:情感识别已成为情感计算在多种应用中的一个研究主题。本论文旨在利用周围的生理信号以及心电图(ECG),皮肤电反应(GSR),皮肤温度(Temp)和呼吸量(RV)识别人的情绪。为了达到这个目的,我们使用多模式数据库MAHNOB-HCI开展工作。 24个参与者对20个情感刺激视频的情绪反应在价-情绪情感空间中分为两个精确的区域。使用支持向量机(SVM)作为分类器,对上述信号的结果表明,ECG和RV信号与情绪识别问题最相关。此外,与相关工作相比,我们获得的准确性是有希望的。

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