AI Hyperrealism: Why AI Faces Are Perceived as More Real Than Human Ones.

IF 4.8 1区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY Psychological Science Pub Date : 2023-12-01 Epub Date: 2023-11-13 DOI:10.1177/09567976231207095
Elizabeth J Miller, Ben A Steward, Zak Witkower, Clare A M Sutherland, Eva G Krumhuber, Amy Dawel
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引用次数: 1

Abstract

Recent evidence shows that AI-generated faces are now indistinguishable from human faces. However, algorithms are trained disproportionately on White faces, and thus White AI faces may appear especially realistic. In Experiment 1 (N = 124 adults), alongside our reanalysis of previously published data, we showed that White AI faces are judged as human more often than actual human faces-a phenomenon we term AI hyperrealism. Paradoxically, people who made the most errors in this task were the most confident (a Dunning-Kruger effect). In Experiment 2 (N = 610 adults), we used face-space theory and participant qualitative reports to identify key facial attributes that distinguish AI from human faces but were misinterpreted by participants, leading to AI hyperrealism. However, the attributes permitted high accuracy using machine learning. These findings illustrate how psychological theory can inform understanding of AI outputs and provide direction for debiasing AI algorithms, thereby promoting the ethical use of AI.

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人工智能的超现实主义:为什么人工智能的脸被认为比人类的更真实。
最近的证据表明,人工智能生成的面孔现在与人类的面孔无法区分。然而,算法在白人面孔上进行了不成比例的训练,因此白人AI面孔可能看起来特别逼真。在实验1 (N = 124名成年人)中,与我们对先前发表的数据的重新分析一起,我们发现白人人工智能的面孔比真实的人脸更容易被判断为人类——我们将这种现象称为人工智能的超现实主义。矛盾的是,在这项任务中犯错误最多的人却最自信(邓宁-克鲁格效应)。在实验2 (N = 610名成年人)中,我们使用面孔空间理论和参与者定性报告来识别区分人工智能和人脸的关键面部属性,但这些属性被参与者误解,导致人工智能的超现实主义。然而,这些属性允许使用机器学习实现高精度。这些发现说明了心理学理论如何为理解人工智能输出提供信息,并为消除人工智能算法的偏见提供方向,从而促进人工智能的道德使用。
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来源期刊
Psychological Science
Psychological Science PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
13.30
自引率
0.00%
发文量
156
期刊介绍: Psychological Science, the flagship journal of The Association for Psychological Science (previously the American Psychological Society), is a leading publication in the field with a citation ranking/impact factor among the top ten worldwide. It publishes authoritative articles covering various domains of psychological science, including brain and behavior, clinical science, cognition, learning and memory, social psychology, and developmental psychology. In addition to full-length articles, the journal features summaries of new research developments and discussions on psychological issues in government and public affairs. "Psychological Science" is published twelve times annually.
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