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从变化中识别身份:源自多个实例的面部表征

Identity From Variation: Representations of Faces Derived From Multiple Instances.

作者信息

Burton A Mike, Kramer Robin S S, Ritchie Kay L, Jenkins Rob

机构信息

School of Psychology, University of Aberdeen.

Department of Psychology, University of York.

出版信息

Cogn Sci. 2016 Jan;40(1):202-23. doi: 10.1111/cogs.12231. Epub 2015 Mar 30.

Abstract

Research in face recognition has tended to focus on discriminating between individuals, or "telling people apart." It has recently become clear that it is also necessary to understand how images of the same person can vary, or "telling people together." Learning a new face, and tracking its representation as it changes from unfamiliar to familiar, involves an abstraction of the variability in different images of that person's face. Here, we present an application of principal components analysis computed across different photos of the same person. We demonstrate that people vary in systematic ways, and that this variability is idiosyncratic-the dimensions of variability in one face do not generalize well to another. Learning a new face therefore entails learning how that face varies. We present evidence for this proposal and suggest that it provides an explanation for various effects in face recognition. We conclude by making a number of testable predictions derived from this framework.

摘要

人脸识别研究往往侧重于区分个体,即“辨别不同的人”。最近人们清楚地认识到,理解同一个人的图像如何变化,即“辨别同一个人”也很有必要。学习一张新面孔,并跟踪其从陌生到熟悉过程中的表征变化,涉及对该人不同面部图像中变异性的抽象。在此,我们展示了对同一个人的不同照片进行主成分分析的应用。我们证明,人们的变化具有系统性,而且这种变异性是因人而异的——一张面孔的变异性维度很难推广到另一张面孔。因此,学习一张新面孔需要了解那张面孔是如何变化的。我们为这一观点提供了证据,并表明它为面部识别中的各种效应提供了解释。我们通过从这个框架得出一些可检验的预测来得出结论。

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