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感知数量的邻近模型。

Proximity model of perceived numerosity.

机构信息

Institute of Psychology, University of Tartu, Näituse 2, 50409, Tartu, Estonia.

Estonian Academy of Sciences, Tallinn, Estonia.

出版信息

Atten Percept Psychophys. 2021 Jul;83(5):2061-2070. doi: 10.3758/s13414-021-02252-x. Epub 2021 Apr 11.

Abstract

The occupancy model (OM) was proposed to explain how the spatial arrangement of dots in sparse random patterns affects their perceived numerosity. The model's central thesis maintained that each dot seemingly fills or occupies its surrounding area within a fixed radius r and the total area collectively occupied by all the dots determines their apparent number. Because the perceptual system is not adapted for the precise estimation of area, it looks likely that the OM is just a convenient computational algorithm that does not necessarily correspond to the processes that actually take place in the perceptual system. As an alternative, the proximity model (PM) was proposed, which instead relies on a binomial function with the probability β characterizing the perceptual salience with which each element can be registered by the perceptual system. It was also assumed that the magnitude of β is proportional to the distance between a dot and its nearest neighbor. A simulation experiment demonstrated that the occupancy area computed according to the OM can almost perfectly be replicated by the mean nearest neighbor distance. It was concluded that proximity between elements is a critical factor in determining their perceived numerosity, but the exact algorithm that is used for the measure of proximities is yet to be established.

摘要

占据模型(OM)被提出,用于解释在稀疏随机模式中,点的空间排列如何影响它们的感知数量。该模型的核心论点是,每个点似乎在固定半径 r 内填充或占据其周围区域,并且所有点共同占据的总面积决定了它们的明显数量。由于感知系统不适合精确估计面积,因此 OM 可能只是一个方便的计算算法,不一定对应于实际发生在感知系统中的过程。作为替代方案,提出了接近模型(PM),它依赖于二项式函数,其中概率β表征每个元素可以被感知系统以何种感知显著性进行注册。还假设β的大小与点与其最近邻之间的距离成正比。一项模拟实验表明,根据 OM 计算的占据区域几乎可以通过平均最近邻距离完美复制。得出的结论是,元素之间的接近程度是确定其感知数量的关键因素,但用于测量接近程度的确切算法尚未确定。

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