Tjan Bosco S, Nandy Anirvan S
Department of Psychology and Neuroscience Graduate Program, University of Southern California, Los Angeles, CA 90089-1061, USA.
J Vis. 2006 Apr 4;6(4):387-413. doi: 10.1167/6.4.8.
Classification image and other similar noise-driven linear methods have found increasingly wider applications in revealing psychophysical receptive field structures or perceptual templates. These techniques are relatively easy to deploy, and the results are simple to interpret. However, being a linear technique, the utility of the classification-image method is believed to be limited. Uncertainty about the target stimuli on the part of an observer will result in a classification image that is the superposition of all possible templates for all the possible signals. In the context of a well-established uncertainty model, which pools the outputs of a large set of linear frontends with a max operator, we show analytically, in simulations, and with human experiments that the effect of intrinsic uncertainty can be limited or even eliminated by presenting a signal at a relatively high contrast in a classification-image experiment. We further argue that the subimages from different stimulus-response categories should not be combined, as is conventionally done. We show that when the signal contrast is high, the subimages from the error trials contain a clear high-contrast image that is negatively correlated with the perceptual template associated with the presented signal, relatively unaffected by uncertainty. The subimages also contain a "haze" that is of a much lower contrast and is positively correlated with the superposition of all the templates associated with the erroneous response. In the case of spatial uncertainty, we show that the spatial extent of the uncertainty can be estimated from the classification subimages. We link intrinsic uncertainty to invariance and suggest that this signal-clamped classification-image method will find general applications in uncovering the underlying representations of high-level neural and psychophysical mechanisms.
分类图像和其他类似的噪声驱动线性方法在揭示心理物理感受野结构或感知模板方面的应用越来越广泛。这些技术相对易于部署,结果也易于解释。然而,作为一种线性技术,分类图像方法的效用被认为是有限的。观察者对目标刺激的不确定性会导致分类图像成为所有可能信号的所有可能模板的叠加。在一个完善的不确定性模型的背景下,该模型使用最大算子汇总大量线性前端的输出,我们通过模拟和人体实验进行了分析表明,在分类图像实验中以相对高的对比度呈现信号可以限制甚至消除内在不确定性的影响。我们进一步认为,来自不同刺激-反应类别的子图像不应像传统那样进行组合。我们表明,当信号对比度较高时,错误试验的子图像包含一个清晰的高对比度图像,该图像与与呈现信号相关的感知模板呈负相关,相对不受不确定性影响。子图像还包含一种对比度低得多的“模糊”,它与与错误反应相关的所有模板的叠加呈正相关。在空间不确定性的情况下,我们表明可以从分类子图像中估计不确定性的空间范围。我们将内在不确定性与不变性联系起来,并表明这种信号钳制分类图像方法将在揭示高级神经和心理物理机制的潜在表征方面找到广泛应用。