基于ECG的情绪刺激生理反应的量化和建模

Beatriz Henriques, Susana Brás, S. Gouveia
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引用次数: 0

摘要

情绪识别系统旨在帮助识别人类情绪,与日常任务中的学习和决策以及心理健康背景下的治疗和诊断有关。该领域的研究从不同生理信号所传递的信息,到针对特征选择和情绪分类的不同方法,都进行了不同方面的探索。这项工作实施了一个专门的实验方案来获取生理数据,如心电图(ECG),同时参与者观看与情绪刺激相关的视频,以引发恐惧、快乐和中性的反应。数据分析基于心电图特征,很明显预期的刺激有效地引起了心律和其他心电图特征的变化。此外,每种情绪刺激表现出不同程度的反应,通过聚类程序清晰地区分出来。基于支持向量机开发的机器学习模型的准确率在87.01%(训练)和38.40%(测试)以上。在本研究的目标上进行情绪状态识别,表明情绪视频刺激后电生理信号处理自动情绪分层的潜在能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ECG based quantification and modeling of physiological reactions to emotional stimuli
Emotion recognition systems are designed to help in the identification of human emotions, being associated with learning and decision-making on daily tasks as well as treatment and diagnosis in mental health contexts. The research in this area explores different aspects ranging from the information conveyed in different physiological signals to different methods aiming feature selection and emotion classification. This work implements a dedicated experimental protocol to acquire physiological data, such as the electrocardiogram (ECG), while the participants watched videos associated with emotional stimulation to provoke reactions of fear, happiness, and neutral. Data analysis was based on ECG features, being clear that the intended stimuli effectively provoked variation in the heart rhythm and in other ECG features. In addition, each emotional stimulus presents different degrees of reactions clearly distinguished by a clustering procedure. A machine learning model developed based on Support Vector Machine achieved accuracy above 87.01% (training) and 38.40% (test). The emotion state identification was performed over the goals of this study, indicating the potential ability of electrophysiological signal processing for automatic emotion stratification, after emotional video stimulation.
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