中国人面部和身体数据集(CFBD):同一个人的实验室和个人照片。

IF 3.9 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL
Ying Hu, Ruyu Pan, Yaqi Xiao, Zihan Zhu, Geraldine Jeckeln, Xiaolan Fu
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引用次数: 0

摘要

面部感知研究中使用的面部刺激通常侧重于模型间的变异性,而对模型内不同条件和时间的变异性的描述不足。然而,暴露于模型内的可变性对于发展稳定的面部表征至关重要。在这里,我们介绍了中国面部和身体数据集(CFBD),这是一个可公开访问的资源,它捕获模型内的可变性,以表示实验室和自然环境中广泛的外观和图像变化。CFBD收录了117位模特的2195张照片,其中既有研究人员拍摄的实验室照片,也有模特捐赠的个人照片。每个模型用10到31张照片来描述,并根据拍摄时间、面部表情、视角和环境背景等属性进行编码。独立参与者还根据面部吸引力、可信度和独特性对这些照片进行评分。结果表明,CFBD捕获了外观和图像属性之间的广泛变化,并且特征评级的模型内方差与模型间方差相当,如果不大于模型间方差的话。此外,在模型内,不同类型的照片的特征评分差异也不同,个人照片被认为比实验室里的照片更有吸引力、更独特、更值得信赖。通过捕获中国个体的各种外观和图像,CFBD为扩展面部数据集提供了宝贵的资源,有可能促进我们对稳健面部表征的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chinese Face and Body Dataset (CFBD): Lab and personal photos of the same individuals.

Face stimuli used in face perception research often focus on between-model variability, underrepresenting within-model variability across conditions and time. However, exposure to within-model variability is crucial for developing stable representations of faces. Here, we introduce the Chinese Face and Body Dataset (CFBD), a publicly accessible resource that captures within-model variability to represent a broad spectrum of appearance and image variations in laboratory and natural settings. The CFBD comprises 2,195 images from 117 models, including both laboratory photos taken by researchers and personal photos donated by models. Each model is depicted in 10 to 31 photos, coded for attributes such as the time photos were taken, facial expressions, viewing angles, and environmental contexts. Independent participants also rated these photos based on facial attractiveness, trustworthiness, and distinctiveness. The results revealed that the CFBD captures a wide range of variations across appearances and image attributes, and the within-model variances in trait ratings are comparable to, if not greater than, the between-model variances. Moreover, within-model variances in the trait ratings differ by image type, with personal photos being rated as more attractive, distinctive, and trustworthy than their laboratory counterparts. By capturing a diverse range of appearances and images of Chinese individuals, the CFBD provides valuable resources that expand face datasets, potentially advancing our understanding of robust face representation.

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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
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