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基于信号检测的人脸匹配置信度相似度模型。

A signal detection-based confidence-similarity model of face matching.

机构信息

Department of Psychology, Ariel University.

出版信息

Psychol Rev. 2024 Apr;131(3):625-663. doi: 10.1037/rev0000435. Epub 2023 Jul 20.

Abstract

Face matching consists of the ability to decide whether two face images (or more) belong to the same person or to different identities. Face matching is crucial for efficient face recognition and plays an important role in applied settings such as passport control and eyewitness memory. However, despite extensive research, the mechanisms that govern face-matching performance are still not well understood. Moreover, to date, many researchers hold on to the belief that match and mismatch conditions are governed by two separate systems, an assumption that likely thwarted the development of a unified model of face matching. The present study outlines a unified unequal variance confidence-similarity signal detection-based model of face-matching performance, one that facilitates the use of receiver operating characteristics (ROC) and confidence-accuracy plots to better understand the relations between match and mismatch conditions, and their relations to factors of confidence and similarity. A binomial feature-matching mechanism is developed to support this signal detection model. The model can account for the presence of both within-identities and between-identities sources of variation in face recognition and explains a myriad of face-matching phenomena, including the match-mismatch dissociation. The model is also capable of generating new predictions concerning the role of confidence and similarity and their intricate relations with accuracy. The new model was tested against six alternative competing models (some postulate discrete rather than continuous representations) in three experiments. Data analyses consisted of hierarchically nested model fitting, ROC curve analyses, and confidence-accuracy plots analyses. All of these provided substantial support in the signal detection-based confidence-similarity model. The model suggests that the accuracy of face-matching performance can be predicted by the degree of similarity/dissimilarity of the depicted faces and the level of confidence in the decision. Moreover, according to the model, confidence and similarity ratings are strongly correlated. (PsycInfo Database Record (c) 2024 APA, all rights reserved).

摘要

人脸匹配包括判断两个(或更多)人脸图像是否属于同一个人或不同身份的能力。人脸匹配对于高效的人脸识别至关重要,在护照管制和目击者记忆等应用场景中发挥着重要作用。然而,尽管进行了广泛的研究,人脸匹配性能的机制仍未得到很好的理解。此外,迄今为止,许多研究人员仍然认为匹配和不匹配条件受两个独立系统的控制,这种假设可能阻碍了人脸匹配的统一模型的发展。本研究概述了一种基于不等方差置信相似性信号检测的统一人脸匹配性能模型,该模型便于使用接收器操作特征(ROC)和置信准确性图来更好地理解匹配和不匹配条件之间的关系,以及它们与信心和相似性因素的关系。开发了一种二项特征匹配机制来支持该信号检测模型。该模型可以解释人脸识别中身份内和身份间变化的存在,并解释了许多人脸匹配现象,包括匹配-不匹配分离。该模型还能够生成关于信心和相似性及其与准确性的复杂关系的新预测。该新模型在三个实验中针对六个替代竞争模型(其中一些假设离散而非连续表示)进行了测试。数据分析包括层次嵌套模型拟合、ROC 曲线分析和置信准确性图分析。所有这些都为基于信号检测的置信相似性模型提供了实质性的支持。该模型表明,人脸匹配性能的准确性可以通过所描绘的人脸的相似性/差异性程度和对决策的信心程度来预测。此外,根据该模型,信心和相似性评分具有很强的相关性。(PsycInfo 数据库记录(c)2024 APA,保留所有权利)。

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