Christensen Jeppe H, Markussen Bo, Bundesen Claus, Kyllingsbæk Søren
Department of Psychology, University of Copenhagen.
Department of Mathematical Sciences, University of Copenhagen.
J Exp Psychol Hum Percept Perform. 2018 Sep;44(9):1383-1398. doi: 10.1037/xhp0000539. Epub 2018 Apr 30.
A physiologically based nonhomogeneous Poisson counter model of visual identification is presented. The model was developed in the framework of a Theory of Visual Attention (Bundesen, 1990; Kyllingsbæk, Markussen, & Bundesen, 2012) and meant for modeling visual identification of objects that are mutually confusable and hard to see. The model assumes that the visual system's initial sensory response consists in tentative visual categorizations, which are accumulated by leaky integration of both transient and sustained components comparable with those found in spike density patterns of early sensory neurons. The sensory response (tentative categorizations) feeds independent Poisson counters, each of which accumulates tentative object categorizations of a particular type to guide overt identification performance. We tested the model's ability to predict the effect of stimulus duration on observed distributions of responses in a nonspeeded (pure accuracy) identification task with eight response alternatives. The time courses of correct and erroneous categorizations were well accounted for when the event-rates of competing Poisson counters were allowed to vary independently over time in a way that mimicked the dynamics of receptive field selectivity as found in neurophysiological studies. Furthermore, the initial sensory response yielded theoretical hazard rate functions that closely resembled empirically estimated ones. Finally, supplied with a Naka-Rushton type contrast gain control, the model provided an explanation for Bloch's law. (PsycINFO Database Record
本文提出了一种基于生理学的视觉识别非齐次泊松计数器模型。该模型是在视觉注意理论(Bundesen,1990;Kyllingsbæk、Markussen和Bundesen,2012)的框架下开发的,旨在对相互混淆且难以看清的物体的视觉识别进行建模。该模型假设视觉系统的初始感觉反应在于初步的视觉分类,这些分类通过对瞬态和持续成分的泄漏整合而积累,这些成分与早期感觉神经元的脉冲密度模式中发现的成分相当。感觉反应(初步分类)为独立的泊松计数器提供输入,每个计数器积累特定类型的初步物体分类,以指导公开的识别表现。我们在一个具有八个反应选项的非加速(纯准确性)识别任务中测试了该模型预测刺激持续时间对观察到的反应分布的影响的能力。当竞争泊松计数器的事件率被允许以模仿神经生理学研究中发现的感受野选择性动态的方式随时间独立变化时,正确和错误分类的时间进程得到了很好的解释。此外,初始感觉反应产生的理论危险率函数与经验估计的函数非常相似。最后,该模型配备了中谷-拉什顿类型的对比度增益控制,为布洛赫定律提供了解释。(PsycINFO数据库记录)