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情绪面部表情是如何快速而准确地被察觉的?一项扩散模型分析。

How are emotional facial expressions detected rapidly and accurately? A diffusion model analysis.

机构信息

Department of Intelligence Science and Technology, Graduate School of Informatics, Kyoto University, Japan.

Department of Intelligence Science and Technology, Graduate School of Informatics, Kyoto University, Japan; Psychological Process Research Team, Guardian Robot Project, RIKEN, Japan.

出版信息

Cognition. 2022 Dec;229:105235. doi: 10.1016/j.cognition.2022.105235. Epub 2022 Aug 4.

Abstract

Previous psychological studies have shown that people detect emotional facial expressions more rapidly and accurately than neutral facial expressions. However, the cognitive mechanisms underlying the efficient detection of emotional facial expressions remain unclear. To investigate this issue, we used diffusion model analyses to estimate the cognitive parameters of a visual search task in which participants detected faces with normal expressions of anger and happiness and their anti-expressions within a crowd of neutral faces. The anti-expressions were artificially created to control the visual changes of facial features but were usually recognized as emotionally neutral. We tested the hypothesis that the emotional significance of the target's facial expressions modulated the non-decisional time and the drift rate. We also conducted an exploratory investigation of the effect of facial expressions on threshold separation. The results showed that the non-decisional time was shorter, and the drift rate was larger for targets with normal expressions than with anti-expressions. Subjective emotional arousal ratings of facial targets were negatively related to the non-decisional time and positively associated with the drift rate. In addition, the threshold separation was larger for normal expressions than for anti-expressions and positively associated with arousal ratings for facial targets. These results suggest that the efficient detection of emotional facial expressions is accomplished via the faster and more cautious accumulation of emotional information of facial expressions which is initiated more rapidly by enhanced attentional allocation.

摘要

先前的心理学研究表明,人们对面部表情的情绪识别比中性表情更为迅速和准确。然而,情绪面部表情高效检测的认知机制尚不清楚。为了研究这个问题,我们使用扩散模型分析来估计参与者在中性面孔人群中检测到愤怒和快乐正常表情及其反向表情的视觉搜索任务的认知参数。反向表情是人为创造的,以控制面部特征的视觉变化,但通常被认作是中性情绪的。我们测试了这样一个假设,即目标面部表情的情绪意义调节了非决策时间和漂移率。我们还对表情对面部目标的阈值分离的影响进行了探索性研究。结果表明,正常表情的非决策时间更短,漂移率更大,而反向表情的非决策时间更长,漂移率更小。对面部目标的主观情绪唤醒评分与非决策时间呈负相关,与漂移率呈正相关。此外,正常表情的阈值分离比反向表情更大,并且与面部目标的唤醒评分呈正相关。这些结果表明,情绪面部表情的高效检测是通过对面部表情情绪信息的更快和更谨慎的积累来实现的,这种积累是通过增强注意力分配而更快地启动的。

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