Kristjánsson Árni
Icelandic Vision Lab, School of Health Sciences, University of Iceland, Reykjavik, Iceland.
Psychon Bull Rev. 2023 Feb;30(1):22-39. doi: 10.3758/s13423-022-02125-w. Epub 2022 Jul 13.
Attentional priming has a dominating influence on vision, speeding visual search, releasing items from crowding, reducing masking effects, and during free-choice, primed targets are chosen over unprimed ones. Many accounts postulate that templates stored in working memory control what we attend to and mediate the priming. But what is the nature of these templates (or representations)? Analyses of real-world visual scenes suggest that tuning templates to exact color or luminance values would be impractical since those can vary greatly because of changes in environmental circumstances and perceptual interpretation. Tuning templates to a range of the most probable values would be more efficient. Recent evidence does indeed suggest that the visual system represents such probability, gradually encoding statistical variation in the environment through repeated exposure to input statistics. This is consistent with evidence from neurophysiology and theoretical neuroscience as well as computational evidence of probabilistic representations in visual perception. I argue that such probabilistic representations are the unit of attentional priming and that priming of, say, a repeated single-color value simply involves priming of a distribution with no variance. This "priming of probability" view can be modelled within a Bayesian framework where priming provides contextual priors. Priming can therefore be thought of as learning of the underlying probability density function of the target or distractor sets in a given continuous task.
注意启动对视觉有主导性影响,它能加速视觉搜索、从拥挤状态中释放项目、减少掩蔽效应,并且在自由选择过程中,被启动的目标会比未被启动的目标更受青睐。许多观点假定,存储在工作记忆中的模板控制着我们的注意力并介导启动。但是这些模板(或表征)的本质是什么呢?对现实世界视觉场景的分析表明,将模板调整到精确的颜色或亮度值是不切实际的,因为由于环境情况和感知解释的变化,这些值可能会有很大差异。将模板调整到一系列最可能的值会更有效。最近的证据确实表明,视觉系统表征了这种概率,通过反复接触输入统计信息逐渐编码环境中的统计变化。这与神经生理学和理论神经科学的证据以及视觉感知中概率表征的计算证据是一致的。我认为这种概率表征是注意启动的单位,比如说,对重复的单一颜色值的启动仅仅涉及对一个无方差分布的启动。这种“概率启动”观点可以在贝叶斯框架内建模,其中启动提供上下文先验。因此,启动可以被看作是在给定的连续任务中对目标或干扰项集合的潜在概率密度函数的学习。