视觉统计学习通过独立的聚类过程克服了场景的不相似性。

IF 2 4区 心理学 Q2 OPHTHALMOLOGY Journal of Vision Pub Date : 2024-08-01 DOI:10.1167/jov.24.8.5
Xiaoyu Chen, Jie Wang, Qiang Liu
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引用次数: 0

摘要

情境提示是在视觉搜索任务中观察到的一种视觉统计学习现象。以往的研究发现,项目偏离其中心点的程度(称为变异性)决定了该重复场景的泛化程度。引入变异性会显著增加同一重复布局的多次出现之间的不相似性。然而,目前的理论并不能解释在情境线索学习过程中帮助克服这种不相似性的机制。我们提出,认知系统最初是通过与特定重复场景无关的自动聚类将特定场景抽象为场景布局,然后利用这些抽象场景布局进行情境线索学习。实验 1 表明,在搜索场景中引入更大的可变性会阻碍情境线索学习。实验 2 进一步证实,在完全新颖的场景中进行涉及空间变化的广泛视觉搜索,会促进随后涉及相应场景变化的情境线索学习,从而证实聚类知识的学习先于情境线索学习,并且与具体的重复场景无关。总之,本研究证明了视觉统计学习中存在多层次的学习,其中项目层次的学习可以作为布局层次学习的材料,而泛化则反映了项目层次的知识对布局层次知识的制约作用。
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The visual statistical learning overcomes scene dissimilarity through an independent clustering process.

Contextual cueing is a phenomenon of visual statistical learning observed in visual search tasks. Previous research has found that the degree of deviation of items from its centroid, known as variability, determines the extent of generalization for that repeated scene. Introducing variability increases dissimilarity between multiple occurrences of the same repeated layout significantly. However, current theories do not explain the mechanisms that help to overcome this dissimilarity during contextual cue learning. We propose that the cognitive system initially abstracts specific scenes into scene layouts through an automatic clustering unrelated to specific repeated scenes, and subsequently uses these abstracted scene layouts for contextual cue learning. Experiment 1 indicates that introducing greater variability in search scenes leads to a hindering in the contextual cue learning. Experiment 2 further establishes that conducting extensive visual searches involving spatial variability in entirely novel scenes facilitates subsequent contextual cue learning involving corresponding scene variability, confirming that learning clustering knowledge precedes the contextual cue learning and is independent of specific repeated scenes. Overall, this study demonstrates the existence of multiple levels of learning in visual statistical learning, where item-level learning can serve as material for layout-level learning, and the generalization reflects the constraining role of item-level knowledge on layout-level knowledge.

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来源期刊
Journal of Vision
Journal of Vision 医学-眼科学
CiteScore
2.90
自引率
5.60%
发文量
218
审稿时长
3-6 weeks
期刊介绍: Exploring all aspects of biological visual function, including spatial vision, perception, low vision, color vision and more, spanning the fields of neuroscience, psychology and psychophysics.
期刊最新文献
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