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Electrodermography and Heart Rate Sensing for Multiclass Emotion Prediction in Virtual Reality: A Preliminary Investigation

机译:虚拟现实中多牌情绪预测的电优术和心率感测:初步调查

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This paper demonstrates a method for classifying multi-model emotions using a combination of Heart Rate (HR) and Electrodermography (EDG) signals with SVM (Support Vector Machine) as the classifier in Virtual Reality (VR). A wearable was used during the experiment to acquire the subject's HR and EDG signals simultaneously while watching 360O videos in VR. The acquired signals are then classified with SVM in a multi-class model for valence and arousal. The experiment conducted is for 10 intra-subject classifications, in which two subjects achieved the best accuracy of 99.5%, while for inter-subject classification of 10 subjects achieved 66.0%, This paper demonstrates that combined signals of HR and EDG can provide high accuracy for multi-class emotion classification in VR.
机译:本文展示了一种使用SVM(支持向量机)的心率(HR)和电代信号(EDG)信号的组合为虚拟现实(VR)中的分类器进行分类多模型情绪的方法。 在实验期间使用可穿戴的可穿戴物,同时观看360的同时获取受试者的HR和EDG信号 VR中的视频。 然后,所获取的信号用SVM分类为价和唤醒的多级模型。 进行的实验是为10个内科分类,其中两个受试者实现了99.5%的最佳精度,而对于10个受试者的受试者的互类分类,本文表明,人力资源和EDG的组合信号可以提供高精度 VR中的多级情感分类。

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