Blakeslee Barbara, Cope Davis, McCourt Mark E
Department of Psychology, North Dakota State University, Fargo, ND, USA.
Center for Visual and Cognitive Neuroscience, North Dakota State University, 332Q Minard Hall, 1210 Albrecht Blvd, Fargo, ND, 58102, USA.
Behav Res Methods. 2016 Mar;48(1):306-12. doi: 10.3758/s13428-015-0573-4.
The Oriented Difference of Gaussians (ODOG) model of brightness (perceived intensity) by Blakeslee and McCourt (Vision Research 39:4361-4377, 1999), which is based on linear spatial filtering by oriented receptive fields followed by contrast normalization, has proven highly successful in parsimoniously predicting the perceived intensity (brightness) of regions in complex visual stimuli such as White's effect, which had been believed to defy filter-based explanations. Unlike competing explanations such as anchoring theory, filling-in, edge-integration, or layer decomposition, the spatial filtering approach embodied by the ODOG model readily accounts for the often overlooked but ubiquitous gradient structure of induction which, while most striking in grating induction, also occurs within the test fields of classical simultaneous brightness contrast and the White stimulus. Also, because the ODOG model does not require defined regions of interest, it is generalizable to any stimulus, including natural images. The ODOG model has motivated other researchers to develop modified versions (LODOG and FLODOG), and has served as an important counterweight and proof of concept to constrain high-level theories which rely on less well understood or justified mechanisms such as unconscious inference, transparency, perceptual grouping, and layer decomposition. Here we provide a brief but comprehensive description of the ODOG model as it has been implemented since 1999, as well as working Mathematica (Wolfram, Inc.) notebooks which users can employ to generate ODOG model predictions for their own stimuli.
布莱克斯利和麦考特(《视觉研究》39:4361 - 4377,1999年)提出的用于描述亮度(感知强度)的定向高斯差分(ODOG)模型,基于定向感受野的线性空间滤波,随后进行对比度归一化,已被证明在简约地预测复杂视觉刺激(如怀特效应)中区域的感知强度(亮度)方面非常成功,而怀特效应此前被认为无法用基于滤波器的解释来阐释。与诸如锚定理论、填充、边缘整合或分层分解等竞争性解释不同,ODOG模型所体现的空间滤波方法很容易解释常常被忽视但普遍存在的诱导梯度结构,这种结构在光栅诱导中最为显著,同时也出现在经典同时亮度对比和怀特刺激的测试区域内。此外,由于ODOG模型不需要定义感兴趣区域,它可以推广到任何刺激,包括自然图像。ODOG模型促使其他研究人员开发修改版本(LODOG和FLODOG),并作为一个重要的平衡力量和概念验证,用以约束那些依赖不太容易理解或合理的机制(如无意识推理、透明度、感知分组和分层分解)的高级理论。在此,我们简要而全面地描述自1999年以来所实现的ODOG模型,以及配套的Mathematica(Wolfram公司)笔记本,用户可以使用这些笔记本为自己的刺激生成ODOG模型预测。