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Emotional Valence Tracking and Classification via State-Space Analysis of Facial Electromyography

机译:通过面部肌电图的状态空间分析对情绪价进行跟踪和分类

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Tracking the emotional valence state of an individual can serve as an important marker of personal health and well-being. Through automatic detection of emotional valence, timely intervention can be provided in the events of long periods of negative valence, such as anxiety, particularly for people prone to cardiovascular diseases. Our goal here is to use facial electromyogram (EMG) signal to estimate one's hidden self-labelled emotional valence (EV) state during presentation of emotion eliciting music videos via a state-space approach. We present a novel technique to extract binary and continuous features from EMG signals. We then present a state-space model of valence in which the observation process includes both the continuous and binary extracted features. We use these features simultaneously to estimate the model parameters and unobserved EV state via an expectation maximization algorithm. Using experimental data, we illustrate that the estimated EV State of the subject matches the music video stimuli through different trials. Using three different classifiers: support vector machine, linear discriminant analysis, and k-nearest neighbors, a maximum classification accuracy of 89% was achieved for valence prediction based on the estimated emotional valance state. The results illustrate our system's ability to track valence for personal well-being monitoring.
机译:追踪一个人的情绪价状态可以作为个人健康和幸福的重要标志。通过自动检测情绪价,可以在长期的负价事件(如焦虑症)中提供及时的干预,尤其是对于那些容易患心血管疾病的人。我们的目标是使用面部肌电图(EMG)信号,通过状态空间方法估计在呈现引起情感的音乐视频时,人们隐藏的自我标记的情感价(EV)状态。我们提出了一种从EMG信号中提取二进制和连续特征的新颖技术。然后,我们提出一个价态的状态空间模型,在该模型中,观察过程包括连续提取的特征和二进制提取的特征。我们通过期望最大化算法同时使用这些功能来估计模型参数和未观察到的EV状态。使用实验数据,我们说明,通过不同的试验,受试者的估计EV状态与音乐视频刺激相匹配。使用三个不同的分类器:支持向量机,线性判别分析和k最近邻,基于估计的情感价态,对于价位预测,最大分类精度达到89%。结果表明,我们的系统能够跟踪用于个人福祉监控的效价。

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