Murray Thomas, Binetti Nicola, Carlisi Christina, Namboodiri Vinay, Cosker Darren, Viding Essi, Mareschal Isabelle
Department of Psychology, University of Cambridge.
Department of Cognitive Neuroscience, International School for Advanced Studies.
Emotion. 2024 Mar;24(2):495-505. doi: 10.1037/emo0001274. Epub 2023 Aug 10.
People readily and automatically process facial emotion and identity, and it has been reported that these cues are processed both dependently and independently. However, this question of identity independent encoding of emotions has only been examined using posed, often exaggerated expressions of emotion, that do not account for the substantial individual differences in emotion recognition. In this study, we ask whether people's unique beliefs of how emotions should be reflected in facial expressions depend on the identity of the face. To do this, we employed a genetic algorithm where participants created facial expressions to represent different emotions. Participants generated facial expressions of anger, fear, happiness, and sadness, on two different identities. Facial features were controlled by manipulating a set of weights, allowing us to probe the exact positions of faces in high-dimensional expression space. We found that participants created facial expressions belonging to each identity in a similar space that was unique to the participant, for angry, fearful, and happy expressions, but not sad. However, using a machine learning algorithm that examined the positions of faces in expression space, we also found systematic differences between the two identities' expressions across participants. This suggests that participants' beliefs of how an emotion should be reflected in a facial expression are unique to them and identity independent, although there are also some systematic differences in the facial expressions between two identities that are common across all individuals. (PsycInfo Database Record (c) 2024 APA, all rights reserved).
人们能够轻松且自动地处理面部表情中的情绪和身份信息,并且有报道称这些线索的处理既有依赖性又有独立性。然而,情绪的身份独立编码这一问题仅在使用摆拍的、通常是夸张的情绪表达时进行过研究,这些表达并未考虑到情绪识别中存在的显著个体差异。在本研究中,我们探讨人们对于情绪应如何在面部表情中体现的独特信念是否取决于面部的身份。为此,我们采用了一种遗传算法,让参与者创建面部表情来代表不同的情绪。参与者在两种不同身份上生成了愤怒、恐惧、快乐和悲伤的面部表情。通过操纵一组权重来控制面部特征,使我们能够探究面部在高维表情空间中的精确位置。我们发现,对于愤怒、恐惧和快乐的表情,参与者在属于每个身份的类似空间中创建面部表情,该空间对参与者而言是独特的,但悲伤表情并非如此。然而,使用一种机器学习算法来检查表情空间中面部的位置,我们还发现不同参与者的两种身份表情之间存在系统差异。这表明,尽管在所有个体中,两种身份的面部表情之间也存在一些共同的系统差异,但参与者对于情绪应如何在面部表情中体现的信念是独特的且与身份无关。(PsycInfo数据库记录 (c) 2024美国心理学会,保留所有权利)