Murray Richard F, Bennett Patrick J, Sekuler Allison B
Department of Psychology, University of Toronto, Toronto, Canada.
J Vis. 2002;2(1):79-104. doi: 10.1167/2.1.6.
In signal detection theory, an observer's responses are often modeled as being based on a decision variable obtained by cross-correlating the stimulus with a template, possibly after corruption by external and internal noise. The response classification method estimates an observer's template by measuring the influence of each pixel of external noise on the observer's responses. A map that shows the influence of each pixel is called a classification image. Other authors have shown how to calculate classification images from external noise fields, but the optimal calculation has never been determined, and the quality of the resulting classification images has never been evaluated. Here we derive the optimal weighted sum of noise fields for calculating classification images in several experimental designs, and we derive the signal-to-noise ratio (SNR) of the resulting classification images. Using the expressions for the SNR, we show how to choose experimental parameters, such as the observer's performance level and the external noise power, to obtain classification images with a high SNR. We discuss two-alternative identification experiments in which the stimulus is presented at one or more contrast levels, in which each stimulus is presented twice so that we can estimate the power of the internal noise from the consistency of the observer's responses, and in which the observer rates the confidence of his responses. We illustrate these methods in a series of contrast increment detection experiments.
在信号检测理论中,观察者的反应通常被建模为基于一个决策变量,该变量可能是在刺激与模板进行互相关后得到的,互相关过程可能会受到外部和内部噪声的干扰。反应分类方法通过测量外部噪声的每个像素对观察者反应的影响来估计观察者的模板。显示每个像素影响的图称为分类图像。其他作者已经展示了如何从外部噪声场计算分类图像,但从未确定最优计算方法,也从未评估过所得分类图像的质量。在这里,我们推导了在几种实验设计中用于计算分类图像的噪声场的最优加权和,并推导了所得分类图像的信噪比(SNR)。使用信噪比的表达式,我们展示了如何选择实验参数,如观察者的表现水平和外部噪声功率,以获得具有高信噪比的分类图像。我们讨论了二择一识别实验,其中刺激以一个或多个对比度水平呈现,每个刺激呈现两次,以便我们可以根据观察者反应的一致性估计内部噪声的功率,并且观察者对其反应的置信度进行评级。我们在一系列对比度增量检测实验中说明了这些方法。