Humans' extreme face recognition abilities challenge the well-established familiarity effect

IF 2.8 1区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Cognition Pub Date : 2024-08-05 DOI:10.1016/j.cognition.2024.105904
Gailt Yovel , Eden Bash , Sarah Bate
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Abstract

Classification performance is better for learned than unlearned stimuli. This was also reported for faces, where identity matching of unfamiliar faces is worse than for familiar faces. This familiarity advantage led to the conclusion that variability across appearances of the same identity is partly idiosyncratic and cannot be generalized from familiar to unfamiliar identities. Recent advances in machine vision challenge this claim by showing that the performance for untrained (unfamiliar) identities reached the level of trained identities as the number of identities that the algorithm is trained with increases. We therefore asked whether humans who reportedly can identify a vast number of identities, such as super recognizers, may close the gap between familiar and unfamiliar face classification. Consistent with this prediction, super recognizers classified unfamiliar faces just as well as typical participants who are familiar with the same faces, on a task that generates a sizable familiarity effect in controls. Additionally, prosopagnosics' performance for familiar faces was as bad as that of typical participants who were unfamiliar with the same faces, indicating that they struggle to learn even identity-specific information. Overall, these findings demonstrate that by studying the extreme ends of a system's ability we can gain novel insights into its actual capabilities.

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人类极强的人脸识别能力对公认的熟悉效应提出了挑战。
学习过的刺激物比未学习过的刺激物的分类效果更好。在人脸方面也是如此,陌生人脸的身份匹配比熟悉人脸差。这种熟悉优势使人们得出这样的结论,即同一身份的不同表象之间的差异部分是特异性的,不能从熟悉的身份推广到不熟悉的身份。机器视觉的最新进展对这一说法提出了质疑,它表明,随着算法所训练的身份数量的增加,未经训练(陌生)身份的性能达到了训练身份的水平。因此,我们提出了这样一个问题:据说可以识别大量身份的人类(如超级识别器)是否可以缩小熟悉和陌生人脸分类之间的差距。与这一预测相一致的是,在一项会对对照组产生明显熟悉效应的任务中,超级识别者对陌生面孔的分类结果与熟悉相同面孔的典型参与者一样好。此外,超级辨认者对熟悉面孔的辨认表现与不熟悉相同面孔的典型参与者一样糟糕,这表明他们甚至在学习特定身份信息方面也很吃力。总之,这些研究结果表明,通过研究一个系统能力的极端情况,我们可以获得有关其实际能力的新见解。
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来源期刊
Cognition
Cognition PSYCHOLOGY, EXPERIMENTAL-
CiteScore
6.40
自引率
5.90%
发文量
283
期刊介绍: Cognition is an international journal that publishes theoretical and experimental papers on the study of the mind. It covers a wide variety of subjects concerning all the different aspects of cognition, ranging from biological and experimental studies to formal analysis. Contributions from the fields of psychology, neuroscience, linguistics, computer science, mathematics, ethology and philosophy are welcome in this journal provided that they have some bearing on the functioning of the mind. In addition, the journal serves as a forum for discussion of social and political aspects of cognitive science.
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