论文标题
智能车辆的自发驾驶员情感面部表情(DEFE)数据集
A Spontaneous Driver Emotion Facial Expression (DEFE) Dataset for Intelligent Vehicles
论文作者
论文摘要
在本文中,我们介绍了一个新的数据集,即驾驶员情感面部表达(DEFE)数据集,以用于驱动程序自发情绪分析。该数据集包括驾驶过程中60名参与者的面部表情记录。在观看了选定的视频Audio剪辑以引起特定的情绪之后,每个参与者都在相同的驾驶场景中完成了驾驶任务,并在驾驶过程中从维度情绪和离散情绪的方面对他们的情感反应进行了评价。我们还进行了分类实验,以识别唤醒,价,优势以及情绪类别和强度的量表,以建立所提出的数据集的基线结果。此外,本文比较并讨论了驾驶和非驾驶场景之间面部表情的差异。结果表明,AUS(动作单位)在驾驶和非驾驶场景之间存在面部表情存在显着差异,这表明在驾驶场景中的人类情感表达与其他生活场景不同。因此,为了改善交通安全,为驾驶员提供专门为驾驶员的人类情绪数据集是必要的。拟议的数据集将公开使用,以便全球研究人员可以使用它来开发和检查其驾驶员情绪分析方法。据我们所知,这是目前唯一的公共驾驶员面部表情数据集。
In this paper, we introduce a new dataset, the driver emotion facial expression (DEFE) dataset, for driver spontaneous emotions analysis. The dataset includes facial expression recordings from 60 participants during driving. After watching a selected video-audio clip to elicit a specific emotion, each participant completed the driving tasks in the same driving scenario and rated their emotional responses during the driving processes from the aspects of dimensional emotion and discrete emotion. We also conducted classification experiments to recognize the scales of arousal, valence, dominance, as well as the emotion category and intensity to establish baseline results for the proposed dataset. Besides, this paper compared and discussed the differences in facial expressions between driving and non-driving scenarios. The results show that there were significant differences in AUs (Action Units) presence of facial expressions between driving and non-driving scenarios, indicating that human emotional expressions in driving scenarios were different from other life scenarios. Therefore, publishing a human emotion dataset specifically for the driver is necessary for traffic safety improvement. The proposed dataset will be publicly available so that researchers worldwide can use it to develop and examine their driver emotion analysis methods. To the best of our knowledge, this is currently the only public driver facial expression dataset.