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An Investigation of Various Machine and Deep Learning Techniques Applied in Automatic Fear Level Detection and Acrophobia Virtual Therapy

机译:自动恐惧水平检测和恐高症虚拟疗法中各种机器和深度学习技术的研究

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摘要

In this paper, we investigate various machine learning classifiers used in our Virtual Reality (VR) system for treating acrophobia. The system automatically estimates fear level based on multimodal sensory data and a self-reported emotion assessment. There are two modalities of expressing fear ratings: the 2-choice scale, where 0 represents relaxation and 1 stands for fear; and the 4-choice scale, with the following correspondence: 0—relaxation, 1—low fear, 2—medium fear and 3—high fear. A set of features was extracted from the sensory signals using various metrics that quantify brain (electroencephalogram—EEG) and physiological linear and non-linear dynamics (Heart Rate—HR and Galvanic Skin Response—GSR). The novelty consists in the automatic adaptation of exposure scenario according to the subject’s affective state. We acquired data from acrophobic subjects who had undergone an in vivo pre-therapy exposure session, followed by a Virtual Reality therapy and an in vivo evaluation procedure. Various machine and deep learning classifiers were implemented and tested, with and without feature selection, in both a user-dependent and user-independent fashion. The results showed a very high cross-validation accuracy on the training set and good test accuracies, ranging from 42.5% to 89.5%. The most important features of fear level classification were GSR, HR and the values of the EEG in the beta frequency range. For determining the next exposure scenario, a dominant role was played by the target fear level, a parameter computed by taking into account the patient’s estimated fear level.
机译:在本文中,我们研究了我们的虚拟现实(VR)系统中用于治疗恐高症的各种机器学习分类器。该系统会基于多模式感官数据和自我报告的情绪评估来自动估计恐惧程度。表达恐惧等级的方式有两种:2选择量表,其中0表示放松,1表示恐惧; 2选择表。和4选择量表,具有以下对应关系:0-放松,1-低度恐惧,2-中度恐惧和3-高度恐惧。使用量化大脑(脑电图-EEG)以及生理线性和非线性动力学(心率-HR和皮肤电反应-GSR)的各种指标从感官信号中提取一组特征。新颖之处在于可以根据对象的情感状态自动调整暴露场景。我们从经历了体内治疗前暴露会议,然后进行虚拟现实疗法和体内评估程序的高疏受试者中获取了数据。无论是否选择功能,都以用户依赖和用户独立的方式实施和测试了各种机器分类器和深度学习分类器。结果显示,该训练集上的交叉验证准确性非常高,并且测试准确性良好,范围从42.5%到89.5%。恐惧级别分类的最重要特征是GSR,HR和β频率范围内的EEG值。为了确定下一个暴露场景,目标恐惧水平起着主导作用,目标恐惧水平是通过考虑患者的估计恐惧水平而计算得出的参数。

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