连接稀疏和密集显示屏拥挤的 CODE 模型

IF 1.5 4区 心理学 Q4 NEUROSCIENCES Vision Research Pub Date : 2023-12-23 DOI:10.1016/j.visres.2023.108345
Erik Van der Burg , John Cass , Christian N.L. Olivers
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引用次数: 0

摘要

视觉拥挤可以说是对视野外视觉的最大限制,也是一个相对容易理解的现象。然而,大多数研究和理论都是基于由一个目标和最多几个侧翼物体组成的稀疏显示。最近的研究结果表明,被认为支配拥挤现象的规律可能并不适用于密集杂乱的显示,分组和近邻效应可能更为重要。在这里,我们提出了一个计算模型,该模型可以解释稀疏和密集显示中的拥挤效应。该模型是对早期模型的调整和扩展,早期模型曾成功地解释了空间聚类、数量和基于物体的注意力现象。我们的模型结合了近邻规则和相似性分组,并将拥挤定义为目标和侧翼物体无法分割的程度。我们的研究表明,当该模型在解释经典的稀疏显示中的拥挤现象时进行了优化,它也能很好地捕捉现有数据集和新数据集中密集显示中的新拥挤模式。因此,该模型将支配拥挤现象的不同原理,特别是布马定律、分组和近邻相似性效应联系在一起。
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A CODE model bridging crowding in sparse and dense displays

Visual crowding is arguably the strongest limitation imposed on extrafoveal vision, and is a relatively well-understood phenomenon. However, most investigations and theories are based on sparse displays consisting of a target and at most a handful of flanker objects. Recent findings suggest that the laws thought to govern crowding may not hold for densely cluttered displays, and that grouping and nearest neighbour effects may be more important. Here we present a computational model that accounts for crowding effects in both sparse and dense displays. The model is an adaptation and extension of an earlier model that has previously successfully accounted for spatial clustering, numerosity and object-based attention phenomena. Our model combines grouping by proximity and similarity with a nearest neighbour rule, and defines crowding as the extent to which target and flankers fail to segment. We show that when the model is optimized for explaining crowding phenomena in classic, sparse displays, it also does a good job in capturing novel crowding patterns in dense displays, in both existing and new data sets. The model thus ties together different principles governing crowding, specifically Bouma’s law, grouping, and nearest neighbour similarity effects.

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来源期刊
Vision Research
Vision Research 医学-神经科学
CiteScore
3.70
自引率
16.70%
发文量
111
审稿时长
66 days
期刊介绍: Vision Research is a journal devoted to the functional aspects of human, vertebrate and invertebrate vision and publishes experimental and observational studies, reviews, and theoretical and computational analyses. Vision Research also publishes clinical studies relevant to normal visual function and basic research relevant to visual dysfunction or its clinical investigation. Functional aspects of vision is interpreted broadly, ranging from molecular and cellular function to perception and behavior. Detailed descriptions are encouraged but enough introductory background should be included for non-specialists. Theoretical and computational papers should give a sense of order to the facts or point to new verifiable observations. Papers dealing with questions in the history of vision science should stress the development of ideas in the field.
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