Dynamic Face Perception: The Role of Expertise in Dual Processing of Features and Configuration

IF 0.2 Q4 BIOLOGY
Yinqi Huang
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Abstract

Face perception is the basis of many types of social information exchange, but there is controversy over its underlying mechanisms. Researchers have theorized two processing pathways underlying facial perception: configural processing and featural processing. Featural processing focuses on the individual features of a face, whereas configural processing focuses on the spatial relations of features. To resolve the debate on the relative contribution of the two pathways in face perception, researchers have proposed a dual processing model that the two pathways contribute to two different perceptions, detecting face-like patterns and identifying individual faces. The dual processing model is based on face perception experiments that primarily use static faces. As we mostly interact with dynamic faces in real life, the generalization of the model to dynamic faces will advance our understanding of how faces are perceived in real life. This paper proposes a refined dual processing model of dynamic face perception, in which expertise in dynamic face perception supports identifying individual faces, and it is a learned behaviour that develops with age. Specifically, facial motions account for the advantages of dynamic faces, compared to static faces. This paper highlights two intrinsic characteristics of facial motions that enable the advantages of dynamic faces in face perception. Firstly, facial motion provides facial information from various viewpoints, and thus supports the generalization of face perception to the unlearned view of faces. Secondly, distinctive motion patterns serve as a cue to the identity of the face.
动态人脸感知:专业知识在特征和配置双重处理中的作用
人脸感知是许多类型的社会信息交换的基础,但其潜在机制存在争议。研究人员已经将面部感知的两种处理途径理论化:结构处理和自然处理。特征处理侧重于人脸的个体特征,而构形处理侧重于特征的空间关系。为了解决关于这两种途径在人脸感知中的相对贡献的争论,研究人员提出了一个双重处理模型,即这两种路径有助于两种不同的感知,即检测类人脸模式和识别个体人脸。双重处理模型基于主要使用静态人脸的人脸感知实验。由于我们在现实生活中大多与动态人脸互动,将模型推广到动态人脸将促进我们对现实生活中人脸感知方式的理解。本文提出了一种改进的动态人脸感知双重处理模型,其中动态人脸感知的专业知识支持识别个体人脸,这是一种随着年龄的增长而发展的习得行为。具体来说,与静态人脸相比,动态人脸的优势在于面部运动。本文强调了面部运动的两个内在特征,这使得动态面部在面部感知中具有优势。首先,面部运动从不同的角度提供面部信息,从而支持将面部感知推广到未学习的面部视图。第二,独特的动作模式可以提示人脸的身份。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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