Sun Peng, Chubb Charles, Wright Charles E, Sperling George
Department of Cognitive Sciences, University of California, Irvine, CA 92697; Department of Psychology, New York University, New York, NY 10003;
Department of Cognitive Sciences, University of California, Irvine, CA 92697.
Proc Natl Acad Sci U S A. 2016 Oct 25;113(43):E6712-E6720. doi: 10.1073/pnas.1614062113. Epub 2016 Oct 10.
The visual images in the eyes contain much more information than the brain can process. An important selection mechanism is feature-based attention (FBA). FBA is best described by attention filters that specify precisely the extent to which items containing attended features are selectively processed and the extent to which items that do not contain the attended features are attenuated. The centroid-judgment paradigm enables quick, precise measurements of such human perceptual attention filters, analogous to transmission measurements of photographic color filters. Subjects use a mouse to locate the centroid-the center of gravity-of a briefly displayed cloud of dots and receive precise feedback. A subset of dots is distinguished by some characteristic, such as a different color, and subjects judge the centroid of only the distinguished subset (e.g., dots of a particular color). The analysis efficiently determines the precise weight in the judged centroid of dots of every color in the display (i.e., the attention filter for the particular attended color in that context). We report 32 attention filters for single colors. Attention filters that discriminate one saturated hue from among seven other equiluminant distractor hues are extraordinarily selective, achieving attended/unattended weight ratios >20:1. Attention filters for selecting a color that differs in saturation or lightness from distractors are much less selective than attention filters for hue (given equal discriminability of the colors), and their filter selectivities are proportional to the discriminability distance of neighboring colors, whereas in the same range hue attention-filter selectivity is virtually independent of discriminabilty.
眼睛中的视觉图像所包含的信息远远超过大脑能够处理的范围。一种重要的选择机制是基于特征的注意力(FBA)。FBA 最好用注意力过滤器来描述,这些过滤器精确地规定了包含被关注特征的项目被选择性处理的程度,以及不包含被关注特征的项目被衰减的程度。质心判断范式能够快速、精确地测量这种人类感知注意力过滤器,类似于对摄影滤色镜的透射测量。受试者使用鼠标来定位一个短暂显示的点云的质心——重心,并接收精确的反馈。一部分点通过某种特征(如不同颜色)来区分,受试者只判断被区分的子集(如特定颜色的点)的质心。该分析有效地确定了显示器中每种颜色的点在判断质心中的精确权重(即该情境下对特定被关注颜色的注意力过滤器)。我们报告了 32 种单一颜色的注意力过滤器。从七种其他等亮度干扰色中区分出一种饱和色调的注意力过滤器具有极高的选择性,其被关注/未被关注的权重比>20:1。用于选择与干扰色在饱和度或亮度上不同的颜色的注意力过滤器,其选择性远低于用于色调的注意力过滤器(在颜色具有同等可辨别性的情况下),并且它们的过滤器选择性与相邻颜色的可辨别距离成正比,而在相同范围内,色调注意力过滤器的选择性实际上与可辨别性无关。