Scheessele Michael R, Pizlo Zygmunt
Department of Computer and Information Sciences, Indiana University, South Bend, 1700 Mishawaka Avenue, South Bend, IN 46634, USA.
Perception. 2007;36(4):558-80. doi: 10.1068/p5655.
When a figure is only partially visible and its contours represent a small fraction of total image contours (as when there is much background clutter), a fast contour classification mechanism may filter non-figure contours in order to restrict the size of the input to subsequent contour grouping mechanisms. The results of two psychophysical experiments suggest that the human visual system can classify figure from non-figure contours on the basis of a difference in some contour property (e.g. length, orientation, curvature, etc). While certain contour properties (e.g. orientation, curvature) require only local analysis for classification, other contour properties (e.g. length) may require more global analysis of the retinal image. We constructed a pyramid-based computational model based on these observations and performed two simulations of experiment 1: one simulation with classification enabled and the other simulation with classification disabled. The classification-based simulation gave the superior account of human performance in experiment 1. When a figure is partially visible, with few contours relative to the number of non-figure contours, contour classification followed by contour grouping can be more efficient than contour grouping alone, owing to smaller input to grouping mechanisms.
当一个图形仅部分可见且其轮廓在总图像轮廓中占比很小(比如存在大量背景干扰时),一种快速轮廓分类机制可能会过滤非图形轮廓,以便限制后续轮廓分组机制的输入大小。两项心理物理学实验结果表明,人类视觉系统能够基于某些轮廓属性(如长度、方向、曲率等)的差异,将图形轮廓与非图形轮廓区分开来。虽然某些轮廓属性(如方向、曲率)进行分类仅需局部分析,但其他轮廓属性(如长度)可能需要对视网膜图像进行更多全局分析。基于这些观察结果,我们构建了一个基于金字塔的计算模型,并对实验1进行了两次模拟:一次模拟启用分类,另一次模拟禁用分类。基于分类的模拟在实验1中对人类表现给出了更优解释。当一个图形部分可见,相对于非图形轮廓数量而言轮廓较少时,先进行轮廓分类再进行轮廓分组,由于分组机制的输入较小,可能比单独进行轮廓分组更高效。