Liu Z, Knill D C, Kersten D
NEC Research Institute, Princeton, N.J.
Vision Res. 1995 Feb;35(4):549-68. doi: 10.1016/0042-6989(94)00150-k.
We describe a novel approach, based on ideal observer analysis, for measuring the ability of human observers to use image information for 3D object perception. We compute the statistical efficiency of subjects relative to an ideal observer for a 3D object classification task. After training to 11 different views of a randomly shaped thick wire object, subjects were asked which of a pair of noisy views of the object best matched the learned object. Efficiency relative to the actual information in the stimuli can be as high as 20%. Increases in object regularity (e.g. symmetry) lead to increases in the efficiency with which novel views of an object could be classified. Furthermore, such increases in regularity also lead to decreases in the effect of viewpoint on classification efficiency. Human statistical efficiencies relative to a 2D ideal observer exceeded 100%, thereby excluding all models which are sub-optimal relative to the 2D ideal.
我们描述了一种基于理想观察者分析的新方法,用于测量人类观察者利用图像信息进行三维物体感知的能力。对于一个三维物体分类任务,我们计算了受试者相对于理想观察者的统计效率。在对一个随机形状的粗线物体的11个不同视图进行训练后,要求受试者判断该物体的哪一对有噪声的视图与所学物体最匹配。相对于刺激中的实际信息,效率可高达20%。物体规则性(如对称性)的增加会导致对物体新视图进行分类的效率提高。此外,这种规则性的增加还会导致视角对分类效率的影响降低。相对于二维理想观察者,人类的统计效率超过了100%,从而排除了所有相对于二维理想观察者次优的模型。