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Combining Electrodermal Activity and Speech Analysis towards a more Accurate Emotion Recognition System

机译:将电沉积活性和言语分析结合到更准确的情感识别系统

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Current research in the emotion recognition field is exploring the possibility of merging the information from physiological signals, behavioural data, and speech. Electrodermal activity (EDA) is amongst the main psychophysiological arousal indicators. Nonetheless, it is quite difficult to be analyzed in ecological scenarios, like, for instance, when the subject is speaking. On the other hand, speech carries relevant information of subject emotional state and its potential in the field of affective computing is still to be fully exploited. In this work, we aim at exploring the possibility of merging the information from electrodermal activity (EDA) and speech to improve the recognition of human arousal level during the pronunciation of single affective words. Unlike the majority of studies in the literature, we focus on speakers’ arousal rather than the emotion conveyed by the spoken word. Specifically, a support vector machine with recursive feature elimination strategy (SVM-RFE) is trained and tested on three datasets, i.e using the two channels (i.e., speech and EDA) separately and then jointly. The results show that the merging of EDA and speech information significantly improves the marginal classifier (+11.64%). The six selected features by the RFE procedure will be used for the development of a future multivariate model of emotions.
机译:情绪识别领域的目前的研究正在探索从生理信号,行为数据和语音中合并信息的可能性。电台活性(EDA)是主要的心理生理唤起指标。尽管如此,很难在生态场景中分析,例如,当主题正在发言时。另一方面,语音携带主题情绪状态的相关信息,其在情感计算领域的潜力仍然被充分利用。在这项工作中,我们的目标是探讨从电子活动(EDA)和语音中融合信息的可能性,以改善单一情感单词的发音期间对人类唤起水平的识别。与文献中的大多数研究不同,我们专注于发言者的唤醒,而不是由口语传达的情绪。具体地,具有递归特征消除策略(SVM-RFE)的支持向量机在三个数据集上培训并测试,即使用两个通道(即,语音和EDA),然后联合。结果表明,EDA和语音信息的合并显着改善了边缘分类器(+ 11.64%)。 RFE程序的六种选定功能将用于开发未来的多元情绪模型。

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