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An Ensemble Method for Classifying Startle Eyeblink Modulation from High-Speed Video Records

机译:一种从高速视频记录中分类惊吓眨眼调制的集成方法

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摘要

Psychophysiological measurements of startle eyeblink can provide information about the state of an individual regarding sensory, attentional, cognitive, and affective processing, and thus reveal valences of interest for affective computing. However, eyeblink is usually measured using intrusive contact electromyographic (EMG) electrodes, accompanied by a laborious manual process of feature extraction. We introduce a new noninvasive automatic system using high-speed video recording of startle blinks in conjunction with data-driven feature selection and support vector machine (SVM) ensembles to classify startle eyeblinks. Using a prestimulus (prepulse) to produce robust modulation of acoustically elicited startle eyeblinks, we tracked the blinks using 250 frames per second video, and extracted different features from eyelid displacement and velocity signals. The SVMs were able to determine whether a trial had contained startle or prepulse+startle stimuli with an accuracy of up to 73 percent (five-fold cross validation). By fusing the decisions made on different feature sets, an ensemble of seven SVMs increased this rate to almost 79 percent. Since startle eyeblinks are robustly modulated by not only sensory events (such as the prepulse used in this study) but also affective and cognitive states, eyelid tracking using high-speed video, in conjunction with the introduced classification method, is an effective and user-friendly alternative to EMG for classification of startle blinks to infer users' affective-cognitive states.
机译:惊吓眨眼的心理生理学测量可以提供有关个体在感觉,注意力,认知和情感处理方面的状态的信息,从而揭示情感计算的兴趣价。但是,眨眼通常使用侵入性接触式肌电(EMG)电极进行测量,并伴随费力的手动特征提取过程。我们引入了一种新的非侵入式自动系统,该系统使用高速视频记录惊吓眨眼,并结合数据驱动的特征选择和支持向量机(SVM)集合对惊吓眨眼进行分类。使用预激励(预脉冲)对听觉引起的惊吓眨眼产生强大的调制,我们使用每秒250帧的视频跟踪眨眼,并从眼睑位移和速度信号中提取不同的特征。 SVM能够确定试验是否包含惊吓或脉冲前+惊吓刺激,其准确性高达73%(五倍交叉验证)。通过融合对不同功能集做出的决策,七个SVM的集合将这一比率提高到将近79%。由于惊吓的眨眼不仅受到感觉事件(例如本研究中使用的预脉冲)的强烈调节,而且还受到情感和认知状态的强烈调节,因此使用高速视频结合引入的分类方法跟踪眼睑是一种有效的方法, EMG的友好替代品,用于对眨眼眨眼进行分类,以推断用户的情感认知状态。

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