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How robust is familiar face recognition? A repeat detection study of more than 1000 faces

机译:熟悉的人脸识别功能有多强大?重复检测研究超过1000张脸

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摘要

Recent theories suggest that familiar faces have a robust representation in memory because they have been encountered over a wide variety of contexts and image changes (e.g. lighting, viewpoint and expression). By contrast, unfamiliar faces are encountered only once, and so they do not benefit from such richness of experience and are represented based on image-specific details. In this registered report, we used a repeat detection task to test whether familiar faces are recognized better than unfamiliar faces across image changes. Participants viewed a stream of more than 1000 celebrity face images for 0.5 s each, any of which might be repeated at a later point and has to be detected. Some participants saw the same image at repeats, while others saw a different image of the same face. A post-experimental familiarity check allowed us to determine which celebrities were and were not familiar to each participant. We had three predictions: (i) detection would be better for familiar than unfamiliar faces, (ii) detection would be better across same rather than different images, and (iii) detection of familiar faces would be comparable across same and different images, but detection of unfamiliar faces would be poorer across different images. We obtained support for the first two predictions but not the last. Instead, we found that repeat detection of faces, regardless of familiarity, was poorer across different images. Our study suggests that the robustness of familiar face recognition may have limits, and that under some conditions, familiar face recognition can be just as influenced by image changes as unfamiliar face recognition.
机译:最近的理论表明,熟悉的面孔在记忆中具有很强的表现力,因为它们已在各种各样的上下文和图像变化(例如照明,视点和表情)中遇到。相比之下,陌生的面孔仅会遇到一次,因此它们不会从这种丰富的经验中受益,而是根据特定于图像的细节进行表示。在此已注册的报告中,我们使用重复检测任务来测试在图像变化中是否比不熟悉的面孔识别更好的面孔。参与者观看了1000多个名人脸部图像流,每个图像的时间为0.5秒,这些图像可能在以后的某个时间重复出现,因此必须对其进行检测。一些参与者重复看到相同的图像,而另一些参与者看到相同面孔的不同图像。实验后的熟悉度检查使我们能够确定每个参与者对哪些名人不熟悉。我们有三个预测:(i)对于熟悉的面孔,其检测比不熟悉的面孔要好;(ii)在相同而不是不同的图像上,检测会更好;(iii)在相同和不同的图像上,熟悉的面孔的检测是可比较的,但是在不同的图像上,陌生面孔的检测效果会更差。我们获得了前两个预测的支持,但没有获得最后一个的支持。取而代之的是,我们发现,无论是否熟悉,重复检测面部在不同图像上的效果都较差。我们的研究表明,熟悉的人脸识别的鲁棒性可能会受到限制,并且在某些条件下,熟悉的人脸识别可能像陌生人脸识别一样受到图像变化的影响。

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