关注复杂的场景特征。

IF 1.7 4区 心理学 Q3 PSYCHOLOGY
Attention Perception & Psychophysics Pub Date : 2025-07-01 Epub Date: 2025-05-12 DOI:10.3758/s13414-025-03081-y
Gaeun Son, Michael L Mack, Dirk B Walther
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引用次数: 0

摘要

在日常的视觉体验中,人类视觉系统从视觉环境中提取有功能意义的特征来完成必要的认知任务。在如此复杂的环境中,视觉注意力是如何运作的?传统的注意力理论,如特征集成理论(FIT)和引导搜索(GS),是否适用于这样的场景特征?这些理论为选择性注意如何将视觉输入解析为基本特征并将这些特征绑定为整体感知提供了一个框架。到目前为止,这个理论框架主要是用基本的、局部的特征进行测试的,比如颜色和方向。在这里,我们研究了FIT和GS框架在多大程度上推广到生态有效的场景特征。我们进行了一系列视觉搜索实验,让参与者在干扰物场景中寻找目标场景。这些场景是在包含高级场景特征的二维参数空间中生成的,例如室内照明、场景布局或表面纹理。我们从这个空间中采样目标和干扰物场景,这样我们就可以比较特征和连接搜索行为。不同集大小下的视觉搜索结果表明:1)搜索效率不高,特征和连接搜索条件均表现出集大小效应,但2)特征搜索的效率显著高于连接搜索。鉴于这些结果,我们认为现实世界的场景特征不是预先注意的,需要选择性注意才能成功进行视觉搜索。然而,这些特征仍然以与GS一致的方式有意义地引导注意力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention to complex scene features.

In daily visual experiences, the human visual system extracts functionally meaningful features from the visual environment to perform necessary cognitive tasks. How does visual attention operate in such complex environments? Would conventional attention theories, such as feature integration theory (FIT) and guided search (GS), apply to such scene features? These theories provide a framework for how selective attention parses visual input into basic features and binds those features into integral percepts. This theoretical framework so far been tested mainly with basic, localized features, such as colour and orientation. Here, we investigate to what extent the FIT and GS framework generalizes to ecologically valid scene features. We conducted a series of visual search experiments in which participants searched for a target scene among distractor scenes. These scenes were generated within a two-dimensional parametric space of high-level scene features, such as indoor lighting, scene layout, or surface texture. We sampled target and distractor scenes from this space in such a way that we could compare feature and conjunction search behaviours. Visual search performance across different set sizes showed that 1) search was never efficient, both feature and conjunction search conditions exhibited set size effects, but 2) feature search was significantly more efficient than conjunction search. Given these results, we propose that real-world scene features are not preattentive, requiring selective attention for successful visual search. However, these features still meaningfully guide attention in a manner consistent with GS.

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来源期刊
CiteScore
3.60
自引率
17.60%
发文量
197
审稿时长
4-8 weeks
期刊介绍: The journal Attention, Perception, & Psychophysics is an official journal of the Psychonomic Society. It spans all areas of research in sensory processes, perception, attention, and psychophysics. Most articles published are reports of experimental work; the journal also presents theoretical, integrative, and evaluative reviews. Commentary on issues of importance to researchers appears in a special section of the journal. Founded in 1966 as Perception & Psychophysics, the journal assumed its present name in 2009.
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