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Multiclass SVM for Affect Recognition with Hardware Implementation

机译:多类支持向量机,用于通过硬件实现进行情感识别

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Emotion recognition is an interested field in the affective computing domain thanks to its important applications in Human Machine Interaction. Recent investigated studies proved the effectiveness and the relevance of physiological response as a modality to detect the human emotional states. This paper deals with an improved emotion recognition system that aims to classify the affective states into three defined areas in Arousal-Valence Space. Basing on previous works, we explored only two physiological signals, namely, electrocardiogram and respiration amplitude which were collected in the publicly available database MAHNOB-HCI. After preprocessing the signals, we extracted and normalized emotionally relevant features from these two signals. Prior to the classification stage using multiclass support vector machine as a classifier, we applied a level feature fusion. Furthermore, we implemented the classification stage on the Raspberry Pi III Model B using Python platform. In this work, we achieved 60.41 % for Arousal and 59.57% for Valence. The obtained classification rates are promising compared to recent related works.
机译:情感识别由于在人机交互中的重要应用而成为情感计算领域中一个有趣的领域。最近的研究证明了生理反应作为检测人类情绪状态的一种方法的有效性和相关性。本文研究了一种改进的情绪识别系统,该系统旨在将情感状态分类为Arousal-Valence空间中的三个定义区域。在以前的工作的基础上,我们仅探讨了两种生理信号,即心电图和呼吸幅度,这些信号是在公开数据库MAHNOB-HCI中收集的。在对信号进行预处理之后,我们从这两个信号中提取并规范化了与情感相关的特征。在使用多类支持向量机作为分类器的分类阶段之前,我们应用了水平特征融合。此外,我们使用Python平台在Raspberry Pi III Model B上实现了分类阶段。在这项工作中,我们实现了Arousal的60.41%和Valence的59.57%。与最近的相关著作相比,所获得的分类率是有希望的。

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