首页> 外文期刊>Cognition: International Journal of Cognitive Psychology >Tolerance for distorted faces: Challenges to a configural processing account of familiar face recognition
【24h】

Tolerance for distorted faces: Challenges to a configural processing account of familiar face recognition

机译:失真脸部的公差:熟悉脸部识别的配置处理说明面临的挑战

获取原文
获取原文并翻译 | 示例
       

摘要

Face recognition is widely held to rely on 'configural processing', an analysis of spatial relations between facial features. We present three experiments in which viewers were shown distorted faces, and asked to resize these to their correct shape. Based on configural theories appealing to metric distances between features, we reason that this should be an easier task for familiar than unfamiliar faces (whose subtle arrangements of features are unknown). In fact, participants were inaccurate at this task, making between 8% and 13% errors across experiments. Importantly, we observed no advantage for familiar faces: in one experiment participants were more accurate with unfamiliars, and in two experiments there was no difference. These findings were not due to general task difficulty - participants were able to resize blocks of colour to target shapes (squares) more accurately. We also found an advantage of familiarity for resizing other stimuli (brand logos). If configural processing does underlie face recognition, these results place constraints on the definition of 'configural'. Alternatively, familiar face recognition might rely on more complex criteria - based on tolerance to within-person variation rather than highly specific measurement.
机译:人脸识别被广泛依赖于“配置处理”,即对人脸特征之间空间关系的分析。我们提供了三个实验,在这些实验中,向观看者显示了扭曲的面孔,并要求将其调整为正确的形状。基于吸引特征之间度量距离的配置理论,我们认为与熟悉的面孔(特征的细微排列未知)相比,对于熟悉的面孔来说,这应该是一件容易的事。实际上,参与者在此任务上不准确,在整个实验中犯了8%至13%的错误。重要的是,我们没有发现熟悉面孔的优势:在一个实验中,参与者对不熟悉的人更为准确,而在两个实验中,则没有差异。这些发现并不是由于一般任务的困难-参与者能够更准确地将颜色块调整为目标形状(正方形)的大小。我们还发现了调整其他刺激(品牌徽标)大小时熟悉的优势。如果配置处理确实是人脸识别的基础,则这些结果将限制“配置”的定义。另外,熟悉的人脸识别可能依赖于更复杂的标准-基于对人际变化的容忍度,而不是高度特定的测量。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号