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使用现代软件系统构建面部组合图像中的熟悉效应。

Familiarity effects in the construction of facial-composite images using modern software systems.

机构信息

School of Psychology, University of Central Lancashire, Preston, PR1 2HE, UK.

出版信息

Ergonomics. 2011 Dec;54(12):1147-58. doi: 10.1080/00140139.2011.623328.

Abstract

We investigate the effect of target familiarity on the construction of facial composites, as used by law enforcement to locate criminal suspects. Two popular software construction methods were investigated. Participants were shown a target face that was either familiar or unfamiliar to them and constructed a composite of it from memory using a typical 'feature' system, involving selection of individual facial features, or one of the newer 'holistic' types, involving repeated selection and breeding from arrays of whole faces. This study found that composites constructed of a familiar face were named more successfully than composites of an unfamiliar face; also, naming of composites of internal and external features was equivalent for construction of unfamiliar targets, but internal features were better named than the external features for familiar targets. These findings applied to both systems, although benefit emerged for the holistic type due to more accurate construction of internal features and evidence for a whole-face advantage. STATEMENT OF RELEVANCE: This work is of relevance to practitioners who construct facial composites with witnesses to and victims of crime, as well as for software designers to help them improve the effectiveness of their composite systems.

摘要

我们研究了目标熟悉度对面部合成的影响,这是执法部门用来定位犯罪嫌疑人的方法。我们调查了两种流行的软件构建方法。参与者观看了一张对他们来说熟悉或不熟悉的目标面孔,并使用典型的“特征”系统从记忆中构建合成面孔,该系统涉及选择单个面部特征,或使用较新的“整体”类型之一,涉及从整脸数组中重复选择和繁殖。这项研究发现,构建熟悉面孔的合成面孔比构建不熟悉面孔的合成面孔更容易被命名;此外,对于构建不熟悉的目标,内部特征和外部特征的合成命名是等效的,但对于熟悉的目标,内部特征比外部特征更容易被命名。这些发现适用于两种系统,尽管由于内部特征的构建更准确以及整个面部优势的证据,整体类型的优势更加明显。相关性声明:这项工作与证人或犯罪受害者制作面部合成的从业人员以及软件设计人员有关,有助于提高他们的合成系统的有效性。

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