Stocker Alan A, Simoncelli Eero P
Howard Hughes Medical Institute, Center for Neural Science and Courant Institute of Mathematical Sciences, New York University, 4 Washington Place Rm 809, New York, New York 10003, USA.
Nat Neurosci. 2006 Apr;9(4):578-85. doi: 10.1038/nn1669. Epub 2006 Mar 19.
Human visual speed perception is qualitatively consistent with a Bayesian observer that optimally combines noisy measurements with a prior preference for lower speeds. Quantitative validation of this model, however, is difficult because the precise noise characteristics and prior expectations are unknown. Here, we present an augmented observer model that accounts for the variability of subjective responses in a speed discrimination task. This allowed us to infer the shape of the prior probability as well as the internal noise characteristics directly from psychophysical data. For all subjects, we found that the fitted model provides an accurate description of the data across a wide range of stimulus parameters. The inferred prior distribution shows significantly heavier tails than a Gaussian, and the amplitude of the internal noise is approximately proportional to stimulus speed and depends inversely on stimulus contrast. The framework is general and should prove applicable to other experiments and perceptual modalities.
人类视觉速度感知在性质上与贝叶斯观察者一致,该观察者将有噪声的测量与对较低速度的先验偏好进行最优组合。然而,对该模型进行定量验证很困难,因为精确的噪声特征和先验期望是未知的。在这里,我们提出了一个增强的观察者模型,该模型考虑了速度辨别任务中主观反应的变异性。这使我们能够直接从心理物理学数据中推断出先验概率的形状以及内部噪声特征。对于所有受试者,我们发现拟合模型在广泛的刺激参数范围内对数据提供了准确的描述。推断出的先验分布显示出比高斯分布重得多的尾部,并且内部噪声的幅度大致与刺激速度成正比,与刺激对比度成反比。该框架具有通用性,应该适用于其他实验和感知模态。