Watson Andrew B, Ahumada Albert J
NASA Ames Research Center, Moffett Field, CA 94035-1000, USA.
J Vis. 2005 Oct 26;5(9):717-40. doi: 10.1167/5.9.6.
The ModelFest data set was created to provide a public source of data to test and calibrate models of foveal spatial contrast detection. It consists of contrast thresholds for 43 foveal achromatic contrast stimuli collected from each of 16 observers. We have fit these data with a variety of simple models that include one of several contrast sensitivity functions, an oblique effect, a spatial sensitivity aperture, spatial frequency channels, and nonlinear Minkowski summation. While we are able to identify one model, with particular parameters, as providing the lowest overall residual error, we also note that the differences among several good-fitting models are small. We find a strong reciprocity between the size of the spatial aperture and the value of the summation exponent: both are effective means of limiting the extent of spatial summation. The results demonstrate the power of simple models to account for the visibility of a wide variety of spatial stimuli and suggest that special mechanisms to deal with special classes of stimuli are not needed. But the results also illustrate the limited power of even this large data set to distinguish among similar competing models. We identify one model as a possible standard, suitable for simple theoretical and applied predictions.
创建ModelFest数据集是为了提供一个公开的数据来源,用于测试和校准中央凹空间对比度检测模型。它包含从16名观察者中每人收集的43种中央凹消色差对比度刺激的对比度阈值。我们用各种简单模型对这些数据进行了拟合,这些模型包括几种对比度敏感度函数之一、倾斜效应、空间敏感度孔径、空间频率通道和非线性闵可夫斯基求和。虽然我们能够确定一个具有特定参数的模型,其总体残差误差最低,但我们也注意到几个拟合良好的模型之间的差异很小。我们发现空间孔径大小与求和指数值之间存在很强的互易性:两者都是限制空间求和范围的有效手段。结果表明简单模型能够解释各种空间刺激的可见性,这表明不需要处理特殊类别刺激的特殊机制。但结果也说明了即使是这个大数据集,区分相似竞争模型的能力也有限。我们确定一个模型作为可能的标准,适用于简单的理论和应用预测。