Integration of Facial Information is Sub-Optimal.

Jason M Gold, Bosco S Tjan, Megan Shotts
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Abstract

How efficiently do we combine information across facial features when recognizing a face? Previous studies have suggested that the perception of a face is not simply the result of an independent analysis of individual facial features, but instead involves a coding of the relationships amongst features. This additional coding of the relationships amongst features is thought to enhance our ability to recognize a face. In our experiments, we tested whether an observer's ability to recognize a face is in fact better than what one would expect from their ability to recognize the individual facial features in isolation. We tested this by using a psychophysical summation-at-threshold technique that has been used extensively to measure how efficiently observers integrate information across spatial locations and spatial frequencies. Surprisingly, we found that observers integrated information across facial features less efficiently than would be predicted by their ability to recognize the individual parts.

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面部信息整合不够理想。
在识别人脸时,我们是如何有效地结合面部特征信息的?以往的研究表明,对人脸的感知并不仅仅是对单个面部特征进行独立分析的结果,而是涉及到对各特征之间关系的编码。这种对特征间关系的额外编码被认为能提高我们识别人脸的能力。在我们的实验中,我们测试了观察者识别人脸的能力是否真的比他们单独识别单个面部特征的能力更强。我们使用了心理物理阈值求和技术来测试这一点,该技术已被广泛用于测量观察者如何有效地整合跨空间位置和空间频率的信息。令人惊讶的是,我们发现观察者整合面部特征信息的效率低于他们识别单个部分的能力。
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