基于深度学习的人脸处理模型的研究现状。

IF 3.2 2区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
P Jonathon Phillips, David White
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引用次数: 0

摘要

经过面部识别训练的深度学习模型现在超过了表现最好的人类参与者。最近的证据表明,它们还模拟了人类面部处理的一些定性方面。这篇综述比较了目前对深度学习模型和人脸处理系统的心理模型的理解。心理模型由两个组成部分组成,当人们感知一张脸时,它们对编码的信息起作用,我们在这里称之为“面部代码”。第一个组件是核心系统,从视网膜输入中提取编码不变和可变属性的人脸代码。第二个组成部分是扩展系统,它将人脸代码与一个人的个人信息及其社会背景联系起来。对现有深度学习模型中人脸代码的研究揭示了一些令人惊讶的结果。例如,为身份识别而设计的网络中的面部代码也编码表情信息,这与区分不变和可变属性的心理模型形成对比。深度学习还可以用于实现人脸处理系统的候选模型,例如,比较可能支持核心和扩展人脸处理系统之间交换的替代认知架构和代码。最后,我们总结了本研究的七个关键教训,并概述了未来研究的三个开放性问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The state of modelling face processing in humans with deep learning.

Deep learning models trained for facial recognition now surpass the highest performing human participants. Recent evidence suggests that they also model some qualitative aspects of face processing in humans. This review compares the current understanding of deep learning models with psychological models of the face processing system. Psychological models consist of two components that operate on the information encoded when people perceive a face, which we refer to here as 'face codes'. The first component, the core system, extracts face codes from retinal input that encode invariant and changeable properties. The second component, the extended system, links face codes to personal information about a person and their social context. Studies of face codes in existing deep learning models reveal some surprising results. For example, face codes in networks designed for identity recognition also encode expression information, which contrasts with psychological models that separate invariant and changeable properties. Deep learning can also be used to implement candidate models of the face processing system, for example to compare alternative cognitive architectures and codes that might support interchange between core and extended face processing systems. We conclude by summarizing seven key lessons from this research and outlining three open questions for future study.

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来源期刊
British journal of psychology
British journal of psychology PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
7.60
自引率
2.50%
发文量
67
期刊介绍: The British Journal of Psychology publishes original research on all aspects of general psychology including cognition; health and clinical psychology; developmental, social and occupational psychology. For information on specific requirements, please view Notes for Contributors. We attract a large number of international submissions each year which make major contributions across the range of psychology.
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