Chrysa Retsa , Ana Hernando Ariza , Nathanael W. Noordanus , Lorenzo Ruffoni , Micah M. Murray , Benedetta Franceschiello
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引用次数: 0
Abstract
Geometric optical illusions (GOIs) are mismatches between physical stimuli and perception. GOIs provide an access point to study the interplay between sensation and perception, Yet, there is relatively scant quantitative investigation of the extent to which different GOIs rely on similar or distinct perceptual mechanisms, which themselves are driven by specific physical properties. We addressed this knowledge gap with a combination of psychophysics and computational modelling. First, 30 healthy adults reported quantitatively their perceptual biases with three GOIs, whose physical properties parametrically varied on a trial-by-trial basis. A given physical property, when considered in isolation, had different effects on perceptual biases depending on the GOI (e.g. the spacing of stimuli affected one GOI, but not another). For a given GOI, there were oftentimes interactions between the effects of different physical properties. Next, we used these psychophysical results to tune a computational model of primary visual cortex that combines parameters of orientation selectivity, receptive-field size, intra-cortical connectivity, and long-range interactions. We showed that similar biases generated in-silico mirror those observed in human behavior when receptive field size, bandwidth and shape (rounded or elongated) are tuned, as well as parameters encoding the strength of the long-range intra-regional interactions between receptive fields. Collectively, our results suggest that different physical properties are not operating independently, but rather synergistically, to generate a GOI. Such results provide a roadmap whereby computational modelling, informed by human psychophysics, can reveal likely mechanistic underpinnings of perception.
几何视错觉(GOIs)是物理刺激与感知之间的错配。然而,对于不同的几何光幻觉在多大程度上依赖于相似或不同的感知机制,而这些机制本身又是由特定的物理特性驱动的,这方面的定量研究相对较少。我们结合心理物理学和计算建模,填补了这一知识空白。首先,30 名健康成年人定量报告了他们对三个 GOI 的感知偏差,这三个 GOI 的物理特性在逐次试验的基础上参数化变化。如果孤立地考虑某一物理特性,它会根据 GOI 的不同而对知觉偏差产生不同的影响(例如,刺激物的间距会影响一个 GOI,但不会影响另一个 GOI)。对于给定的 GOI,不同物理特性之间的影响往往是相互影响的。接下来,我们利用这些心理物理结果调整了初级视觉皮层的计算模型,该模型结合了方向选择性、感受野大小、皮层内连接性和长程相互作用等参数。我们的研究表明,当调节感受野大小、带宽和形状(圆形或拉长形)以及编码感受野之间长程区域内相互作用强度的参数时,在内部产生的类似偏差与人类行为中观察到的偏差相同。总之,我们的研究结果表明,不同的物理特性并不是独立作用的,而是协同作用产生 GOI 的。这些结果提供了一个路线图,在人类心理物理学的启发下,计算建模可以揭示感知的可能机制基础。