Department of Mathematics, Texas Southern University, Houston, TX, USA.
Department of Applied Mathematics, University of Colorado, Boulder, CO, USA.
J Comput Neurosci. 2020 May;48(2):177-192. doi: 10.1007/s10827-020-00743-8. Epub 2020 Apr 27.
Ambiguous visual images can generate dynamic and stochastic switches in perceptual interpretation known as perceptual rivalry. Such dynamics have primarily been studied in the context of rivalry between two percepts, but there is growing interest in the neural mechanisms that drive rivalry between more than two percepts. In recent experiments, we showed that split images presented to each eye lead to subjects perceiving four stochastically alternating percepts (Jacot-Guillarmod et al. Vision research, 133, 37-46, 2017): two single eye images and two interocularly grouped images. Here we propose a hierarchical neural network model that exhibits dynamics consistent with our experimental observations. The model consists of two levels, with the first representing monocular activity, and the second representing activity in higher visual areas. The model produces stochastically switching solutions, whose dependence on task parameters is consistent with four generalized Levelt Propositions, and with experiments. Moreover, dynamics restricted to invariant subspaces of the model demonstrate simpler forms of bistable rivalry. Thus, our hierarchical model generalizes past, validated models of binocular rivalry. This neuromechanistic model also allows us to probe the roles of interactions between populations at the network level. Generalized Levelt's Propositions hold as long as feedback from the higher to lower visual areas is weak, and the adaptation and mutual inhibition at the higher level is not too strong. Our results suggest constraints on the architecture of the visual system and show that complex visual stimuli can be used in perceptual rivalry experiments to develop more detailed mechanistic models of perceptual processing.
模糊的视觉图像可以产生动态和随机的感知解释切换,这种现象被称为感知竞争。这种动态主要在两种感知之间的竞争背景下进行研究,但人们对驱动两种以上感知竞争的神经机制越来越感兴趣。在最近的实验中,我们表明,分别呈现给每只眼睛的分割图像会导致被试感知到四个随机交替的感知(Jacot-Guillarmod 等人,《视觉研究》,133,37-46,2017):两个单眼图像和两个眼间分组的图像。在这里,我们提出了一个分层神经网络模型,该模型表现出与我们的实验观察一致的动力学。该模型由两个层次组成,第一个层次代表单眼活动,第二个层次代表更高视觉区域的活动。该模型产生随机切换的解决方案,其对任务参数的依赖性与四个广义的 Levelt 命题以及实验一致。此外,模型受限的不变子空间内的动力学展示了更简单形式的双稳态竞争。因此,我们的分层模型推广了过去验证过的双眼竞争模型。这个神经机制模型还允许我们探究网络层面上种群之间相互作用的作用。只要从较高到较低视觉区域的反馈较弱,并且较高层次的适应和相互抑制不太强,广义的 Levelt 命题就成立。我们的结果表明了视觉系统结构的约束,并表明复杂的视觉刺激可以用于感知竞争实验,以开发更详细的感知处理机制模型。