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Perceptual multistability predicted by search model for Bayesian decisions

机译:搜索模型预测贝叶斯决策的感知多稳定性

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Perceptual multistability refers to the phenomenon of spontaneous perceptual switching between two or more likely interpretations of an image. Although frequently explained by processes of adaptation or hysteresis, we show that perceptual switching can arise as a natural byproduct of perceptual decision making based on probabilistic (Bayesian) inference, which interprets images by combining probabilistic models of image formation with knowledge of scene regularities. Empirically, we investigated the effect of introducing scene regularities on Necker cube bistability by flanking the Necker cube with fields of unambiguous cubes that are oriented to coincide with one of the Necker cube percepts. We show that background cubes increase the time spent in percepts most similar to the background. To characterize changes in the temporal dynamics of the perceptual alternations beyond percept durations, we introduce Markov Renewal Processes (MRPs). MRPs provide a general mathematical framework for describing probabilistic switching behavior in finite state processes. Additionally, we introduce a simple theoretical model consistent with Bayesian models of vision that involves searching for good interpretations of an image by sampling a posterior distribution coupled with a decay process that favors recent to old interpretations. The model has the same quantitative characteristics as our human data and variation in model parameters can capture between-subject variation. Because the model produces the same kind of stochastic process found in human perceptual behavior, we conclude that multistability may represent an unavoidable by-product of normal perceptual (Bayesian) decision making with ambiguous images.
机译:感知多稳定性是指在图像的两个或更多个可能的解释之间自发地感知切换的现象。尽管经常通过适应或滞后过程进行解释,但我们表明,基于概率(贝叶斯)推理,感知切换可以作为感知决策的自然副产品而出现,该概率通过将图像形成的概率模型与场景规则知识相结合来解释图像。从经验上讲,我们通过将Necker多维数据集的侧面与指向与Necker多维数据集感知之一一致的明确多维数据集的侧翼,研究了引入场景规则对Necker多维数据集双稳态的影响。我们显示背景多维数据集增加了与背景最相似的感知时间。为了表征超出感知持续时间的感知交替的时间动态变化,我们引入了马尔可夫更新过程(MRP)。 MRP为描述有限状态过程中的概率切换行为提供了一个通用的数学框架。此外,我们介绍了一个与贝叶斯视觉模型相一致的简单理论模型,该模型涉及通过对后分布进行采样并结合有利于新旧解释的衰减过程来寻找图像的良好解释。该模型具有与人类数据相同的定量特征,并且模型参数的变化可以捕获对象之间的变化。因为该模型产生与人类感知行为相同的随机过程,所以我们得出结论,多稳定性可能代表具有模糊图像的正常感知(贝叶斯)决策不可避免的副产品。

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