Fiser J, Aslin R N
Department of Brain and Cognitive Sciences and Center for Visual Science, University of Rochester, NY 14627, USA.
Psychol Sci. 2001 Nov;12(6):499-504. doi: 10.1111/1467-9280.00392.
Three experiments investigated the ability of human observers to extract the joint and conditional probabilities of shape co-occurrences during passive viewing of complex visual scenes. Results indicated that statistical learning of shape conjunctions was both rapid and automatic, as subjects were not instructed to attend to any particularfeatures of the displays. Moreover, in addition to single-shape frequency, subjects acquired in parallel several different higher-order aspects of the statistical structure of the displays, including absolute shape-position relations in an array, shape-pair arrangements independent of position, and conditional probabilities of shape co-occurrences. Unsupervised learning of these higher-order statistics provides support for Barlow's theory of visual recognition, which posits that detecting "suspicious coincidences" of elements during recognition is a necessary prerequisite for efficient learning of new visual features.
三项实验研究了人类观察者在被动观看复杂视觉场景时提取形状同时出现的联合概率和条件概率的能力。结果表明,形状联结的统计学习既快速又自动,因为受试者未被指示关注显示的任何特定特征。此外,除了单一形状频率外,受试者还并行获取了显示统计结构的几个不同的高阶方面,包括阵列中的绝对形状-位置关系、独立于位置的形状对排列以及形状同时出现的条件概率。这些高阶统计量的无监督学习为巴洛的视觉识别理论提供了支持,该理论认为在识别过程中检测元素的“可疑巧合”是有效学习新视觉特征的必要前提。