Biederman I, Bar M
Department of Psychology, University of Southern California, Los Angeles 90089-2520, USA.
Vision Res. 1999 Aug;39(17):2885-99. doi: 10.1016/s0042-6989(98)00309-5.
Humans often evidence little difficulty at recognizing objects from arbitrary orientations in depth. According to one class of theories, this competence is based on generalization from templates specified by metric properties (MPs), that were learned for the various orientations. An alternative class of theories assumes that non-accidental properties (NAPs) might be exploited so that even novel objects can be recognized under depth rotation. After scaling MP and NAP differences so that they were equally detectable when the objects were at the same orientation in depth, the present investigation assessed the effects of rotation on same-different judgments for matching novel objects. Judgments of a sequential pair of images of novel objects, when rendered from different viewpoints, revealed relatively low costs when the objects differed in a NAP of a single part, i.e. a geon. However, rotation dramatically reduced the detectability of MP differences to a level well below that expected by chance. NAPs offer a striking advantage over MPs for object classification and are therefore more likely to play a central role in the representation of objects.
人类在从任意深度方向识别物体时通常几乎没有困难。根据一类理论,这种能力基于从为各种方向学习的由度量属性(MPs)指定的模板进行的泛化。另一类理论假设,非偶然属性(NAPs)可能会被利用,以便即使是新颖的物体在深度旋转下也能被识别。在对MP和NAP差异进行缩放,使得当物体在深度上处于相同方向时它们同样可被检测到之后,本研究评估了旋转对匹配新颖物体的异同判断的影响。当从不同视角呈现新颖物体的连续图像对时,当物体在单个部分(即一个几何子)的NAP上存在差异时,判断显示出相对较低的成本。然而,旋转极大地降低了MP差异的可检测性,使其降至远低于偶然预期的水平。对于物体分类,NAPs相对于MPs具有显著优势,因此更有可能在物体表征中发挥核心作用。