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Visual crowding illustrates the inadequacy of local vs. global and feedforward vs. feedback distinctions in modeling visual perception

机译:视觉拥挤说明了在对视觉感知进行建模时本地与全局以及前馈与反馈的区别是不够的

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摘要

Experimentalists tend to classify models of visual perception as being either local or global, and involving either feedforward or feedback processing. We argue that these distinctions are not as helpful as they might appear, and we illustrate these issues by analyzing models of visual crowding as an example. Recent studies have argued that crowding cannot be explained by purely local processing, but that instead, global factors such as perceptual grouping are crucial. Theories of perceptual grouping, in turn, often invoke feedback connections as a way to account for their global properties. We examined three types of crowding models that are representative of global processing models, and two of which employ feedback processing: a model based on Fourier filtering, a feedback neural network, and a specific feedback neural architecture that explicitly models perceptual grouping. Simulations demonstrate that crucial empirical findings are not accounted for by any of the models. We conclude that empirical investigations that reject a local or feedforward architecture offer almost no constraints for model construction, as there are an uncountable number of global and feedback systems. We propose that the identification of a system as being local or global and feedforward or feedback is less important than the identification of a system's computational details. Only the latter information can provide constraints on model development and promote quantitative explanations of complex phenomena.
机译:实验主义者倾向于将视觉感知模型分为局部模型或全局模型,并涉及前馈或反馈处理。我们认为这些区别并不像看起来那样有用,并且我们通过分析视觉拥挤模型来举例说明这些问题。最近的研究认为,不能仅通过局部处理来解释拥挤,而是诸如感知分组之类的全局因素至关重要。反过来,知觉分组理论经常调用反馈连接作为解释其全局属性的一种方式。我们研究了代表全局处理模型的三种类型的拥挤模型,其中两种采用了反馈处理:一种基于傅立叶滤波的模型,一个反馈神经网络以及一个明确地对感知分组建模的特定反馈神经体系结构。仿真表明,任何模型都不能解释关键的经验发现。我们得出结论,由于全球和反馈系统数量众多,因此拒绝本地或前馈体系结构的经验研究几乎没有为模型构建提供任何约束。我们建议,将系统标识为本地或全局,前馈或反馈的重要性不如系统计算细节的标识重要。只有后一种信息才能为模型开发提供约束,并促进对复杂现象的定量解释。

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