Zhang Meng, Ihme Klas, Drewitz Uwe, Jipp Meike
Institute of Transportation Systems, German Aerospace Center/Deutsches Zentrum für Luft- und Raumfahrt (DLR), Braunschweig, Germany.
Front Psychol. 2021 Feb 18;12:622433. doi: 10.3389/fpsyg.2021.622433. eCollection 2021.
Facial expressions are one of the commonly used implicit measurements for the in-vehicle affective computing. However, the time courses and the underlying mechanism of facial expressions so far have been barely focused on. According to the Component Process Model of emotions, facial expressions are the result of an individual's appraisals, which are supposed to happen in sequence. Therefore, a multidimensional and dynamic analysis of drivers' fear by using facial expression data could profit from a consideration of these appraisals. A driving simulator experiment with 37 participants was conducted, in which fear and relaxation were induced. It was found that the facial expression indicators of high novelty and low power appraisals were significantly activated after a fear event (high novelty: = 2.80, < 0.01, = 0.46; low power: = 2.43, < 0.05, = 0.50). Furthermore, after the fear event, the activation of high novelty occurred earlier than low power. These results suggest that multidimensional analysis of facial expression is suitable as an approach for the in-vehicle measurement of the drivers' emotions. Furthermore, a dynamic analysis of drivers' facial expressions considering of effects of appraisal components can add valuable information for the in-vehicle assessment of emotions.
面部表情是车载情感计算中常用的隐式测量方法之一。然而,迄今为止,面部表情的时间进程和潜在机制几乎没有得到关注。根据情绪的成分加工模型,面部表情是个体评估的结果,这些评估应该按顺序发生。因此,通过使用面部表情数据对驾驶员恐惧进行多维动态分析,可以从对这些评估的考虑中获益。进行了一项有37名参与者的驾驶模拟器实验,其中诱发了恐惧和放松情绪。结果发现,在恐惧事件后,高新颖性和低力量评估的面部表情指标被显著激活(高新颖性:= 2.80,< 0.01,= 0.46;低力量:= 2.43,< 0.05,= 0.50)。此外,在恐惧事件后,高新颖性的激活比低力量出现得更早。这些结果表明,面部表情的多维分析适合作为一种车载测量驾驶员情绪的方法。此外,考虑评估成分影响对驾驶员面部表情进行动态分析,可以为车载情绪评估增加有价值的信息。