Vilankar Kedarnath P, Golden James R, Chandler Damon M, Field David J
Department of Psychology, Cornell University, Ithaca, NY.
School of Electrical and Computer Engineering, Oklahoma State University, Stillwater, OK.
J Vis. 2014 Aug 15;14(9):13. doi: 10.1167/14.9.13.
Edges in natural scenes can result from a number of different causes. In this study, we investigated the statistical differences between edges arising from occlusions and nonocclusions (reflectance differences, surface change, and cast shadows). In the first experiment, edges in natural scenes were identified using the Canny edge detection algorithm. Observers then classified these edges as either an occlusion edge (one region of an image occluding another) or a nonocclusion edge. The nonocclusion edges were further subclassified as due to a reflectance difference, a surface change, or a cast shadow. We found that edges were equally likely to be classified as occlusion or nonocclusion edges. Of the nonocclusion edges, approximately 33% were classified as reflectance changes, 9% as cast shadows, and 58% as surface changes. We also analyzed local statistical properties like contrast, average edge profile, and slope of the edges. We found significant differences between the contrast values for each category. Based on the local contrast statistics, we developed a maximum likelihood classifier to label occlusion and nonocclusion edges. An 80%-20% cross validation demonstrated that the human classification could be predicted with 83% accuracy. Overall, our results suggest that for many edges in natural scenes, there exists local statistical information regarding the cause of the edge. We believe that this information can potentially be used by the early visual system to begin the process of segregating objects from their backgrounds.
自然场景中的边缘可能由多种不同原因导致。在本研究中,我们调查了由遮挡和非遮挡(反射率差异、表面变化和投射阴影)产生的边缘之间的统计差异。在第一个实验中,使用Canny边缘检测算法识别自然场景中的边缘。然后,观察者将这些边缘分类为遮挡边缘(图像的一个区域遮挡另一个区域)或非遮挡边缘。非遮挡边缘进一步细分为由反射率差异、表面变化或投射阴影导致的边缘。我们发现边缘被分类为遮挡边缘或非遮挡边缘的可能性相同。在非遮挡边缘中,约33%被分类为反射率变化,9%为投射阴影,58%为表面变化。我们还分析了局部统计特性,如对比度、平均边缘轮廓和边缘斜率。我们发现每个类别的对比度值之间存在显著差异。基于局部对比度统计,我们开发了一个最大似然分类器来标记遮挡边缘和非遮挡边缘。80%-20%的交叉验证表明,人类分类的预测准确率可达83%。总体而言,我们的结果表明,对于自然场景中的许多边缘,存在关于边缘成因的局部统计信息。我们认为,早期视觉系统可能会利用这些信息开始将物体与其背景分离的过程。