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Using computer-vision and machine learning to automate facial coding of positive and negative affect intensity

机译:使用计算机视觉和机器学习来自动进行正面和负面影响强度的面部编码

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摘要

Facial expressions are fundamental to interpersonal communication, including social interaction, and allow people of different ages, cultures, and languages to quickly and reliably convey emotional information. Historically, facial expression research has followed from discrete emotion theories, which posit a limited number of distinct affective states that are represented with specific patterns of facial action. Much less work has focused on dimensional features of emotion, particularly positive and negative affect intensity. This is likely, in part, because achieving inter-rater reliability for facial action and affect intensity ratings is painstaking and labor-intensive. We use computer-vision and machine learning (CVML) to identify patterns of facial actions in 4,648 video recordings of 125 human participants, which show strong correspondences to positive and negative affect intensity ratings obtained from highly trained coders. Our results show that CVML can both (1) determine the importance of different facial actions that human coders use to derive positive and negative affective ratings when combined with interpretable machine learning methods, and (2) efficiently automate positive and negative affect intensity coding on large facial expression databases. Further, we show that CVML can be applied to individual human judges to infer which facial actions they use to generate perceptual emotion ratings from facial expressions.
机译:面部表情对于包括社交互动在内的人际沟通至关重要,并且可以使不同年龄,文化和语言的人快速,可靠地传达情感信息。从历史上看,面部表情研究是从离散的情感理论开始的,这些理论提出了有限的数量不同的情感状态,这些情感状态以特定的面部动作模式来表示。很少有工作集中在情感的维度特征上,尤其是正面和负面影响强度。这在某种程度上可能是因为实现面部动作的评分者间可靠性并影响强度评分是艰苦且费力的工作。我们使用计算机视觉和机器学习(CVML)来识别125位人类参与者的4,648个视频记录中的面部动作模式,这些视频记录与从受过良好训练的编码人员获得的正面和负面影响强度等级有很强的对应关系。我们的结果表明,CVML可以(1)确定人类编码人员在与可解释的机器学习方法结合使用时用于得出正面和负面情感等级的不同面部动作的重要性,以及(2)有效地对大型人的正面和负面情感强度编码进行自动化面部表情数据库。此外,我们表明CVML可以应用于单个人类法官,以推断他们使用哪些面部动作从面部表情中产生感知的情感等级。

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