Caddigan Eamon, Choo Heeyoung, Fei-Fei Li, Beck Diane M
Department of Psychology, University of Illinois, Champaign, IL, USA.
Beckman Institute, University of Illinois, Urbana, IL, USA.
J Vis. 2017 Jan 1;17(1):21. doi: 10.1167/17.1.21.
Traditional models of recognition and categorization proceed from registering low-level features, perceptually organizing that input, and linking it with stored representations. Recent evidence, however, suggests that this serial model may not be accurate, with object and category knowledge affecting rather than following early visual processing. Here, we show that the degree to which an image exemplifies its category influences how easily it is detected. Participants performed a two-alternative forced-choice task in which they indicated whether a briefly presented image was an intact or phase-scrambled scene photograph. Critically, the category of the scene is irrelevant to the detection task. We nonetheless found that participants "see" good images better, more accurately discriminating them from phase-scrambled images than bad scenes, and this advantage is apparent regardless of whether participants are asked to consider category during the experiment or not. We then demonstrate that good exemplars are more similar to same-category images than bad exemplars, influencing behavior in two ways: First, prototypical images are easier to detect, and second, intact good scenes are more likely than bad to have been primed by a previous trial.
传统的识别和分类模型是从记录低级特征、对该输入进行感知组织,并将其与存储的表征相联系开始的。然而,最近的证据表明,这种串行模型可能并不准确,物体和类别知识会影响早期视觉处理,而不是遵循早期视觉处理。在这里,我们表明图像体现其类别的程度会影响其被检测的难易程度。参与者进行了一项二选一的强制选择任务,在该任务中,他们要指出一张短暂呈现的图像是完整的还是相位打乱的场景照片。关键的是,场景的类别与检测任务无关。尽管如此,我们发现参与者能更好地“看到”好的图像,与相位打乱的图像相比,他们能更准确地将好的图像与相位打乱的图像区分开来,而且无论在实验中是否要求参与者考虑类别,这种优势都很明显。然后我们证明,好的范例比差的范例与同类别图像更相似,这从两个方面影响行为:第一,典型图像更容易被检测到;第二,与差的场景相比,完整的好场景更有可能在之前的试验中被启动。