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A More Complete Picture of Emotion Using Electrocardiogram and Electrodermal Activity to Complement Cognitive Data

机译:使用心电图和皮肤电活动补充认知数据的情感更完整的图画

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We describe a method of achieving emotion classification using ECG and EDA data. There have been many studies conducted on usage of heart rate and EDA data to quantify the arousal level of a user. Researchers have identified a connection between a person's ECG data and the positivity or negativity of their emotional state. The goal of this work is to extend this idea to human computer interaction domain. We will explore whether the valence/arousal level of a subject's response to computer based stimuli is predictable using ECG and EDA, and whether or not that information can complement recordings of participants' cognitive data to form a more accurate depiction of emotional state. The experiment consists of presenting three types of stimuli, both interactive and noninteractive, to 9 subjects and recording their physiological response via ECG and EDA data as well as fNIRS device. The stimuli were selected from validated methods of inducing emotion including DEAP dataset, Multi Attribute Task Battery and Tetris video game. The participants' responses were captured using Self-Assessment Manikin surveys which were used as the ground truth labels. The resulting data was analyzed using Machine Learning. The results provide new avenues of research in combining physiological data to classify emotion.
机译:我们描述了一种使用ECG和EDA数据实现情感分类的方法。关于使用心率和EDA数据来量化用户的唤醒水平,已经进行了许多研究。研究人员已经确定了一个人的心电图数据与其情绪状态的阳性或阴性之间的联系。这项工作的目标是将该思想扩展到人机交互领域。我们将探讨使用ECG和EDA是否可以预测受试者对基于计算机的刺激做出反应的效价/刺激水平,以及该信息是否可以补充参与者认知数据的记录以形成对情绪状态的更准确描述。该实验包括向9位受试者呈现互动和非互动三种刺激,并通过ECG和EDA数据以及fNIRS设备记录其生理反应。从经验证的诱发情绪的方法中选择刺激,包括DEAP数据集,多属性任务电池和俄罗斯方块视频游戏。使用自我评估人体模型调查记录了参与者的回答,这些调查被用作基本事实标签。使用机器学习对所得数据进行分析。研究结果为结合生理数据对情绪进行分类提供了新的研究途径。

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