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Detecting natural occlusion boundaries using local cues

机译:使用局部线索检测自然遮挡边界

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摘要

Occlusion boundaries and junctions provide important cues for inferring three-dimensional scene organization from two-dimensional images. Although several investigators in machine vision have developed algorithms for detecting occlusions and other edges in natural images, relatively few psychophysics or neurophysiology studies have investigated what features are used by the visual system to detect natural occlusions. In this study, we addressed this question using a psychophysical experiment where subjects discriminated image patches containing occlusions from patches containing surfaces. Image patches were drawn from a novel occlusion database containing labeled occlusion boundaries and textured surfaces in a variety of natural scenes. Consistent with related previous work, we found that relatively large image patches were needed to attain reliable performance, suggesting that human subjects integrate complex information over a large spatial region to detect natural occlusions. By defining machine observers using a set of previously studied features measured from natural occlusions and surfaces, we demonstrate that simple features defined at the spatial scale of the image patch are insufficient to account for human performance in the task. To define machine observers using a more biologically plausible multiscale feature set, we trained standard linear and neural network classifiers on the rectified outputs of a Gabor filter bank applied to the image patches. We found that simple linear classifiers could not match human performance, while a neural network classifier combining filter information across location and spatial scale compared well. These results demonstrate the importance of combining a variety of cues defined at multiple spatial scales for detecting natural occlusions.
机译:遮挡边界和交界处为从二维图像推断三维场景组织提供了重要线索。尽管机器视觉的一些研究人员已经开发了用于检测自然图像中的遮挡和其他边缘的算法,但是相对较少的心理物理学或神经生理学研究已经调查了视觉系统用于检测自然遮挡的特征。在这项研究中,我们使用心理物理实验解决了这个问题,在该实验中,受试者将包含遮挡的图像斑块与包含表面的斑块区分开来。从一个新颖的遮挡数据库中提取图像补丁,该数据库包含各种自然场景中的标记遮挡边界和纹理化表面。与以前的相关工作一致,我们发现需要相对较大的图像补丁才能获得可靠的性能,这表明人类受试者在较大的空间区域上整合了复杂的信息以检测自然遮挡。通过使用一组从自然遮挡物和表面测得的先前研究过的特征来定义机器观察者,我们证明了在图像块的空间尺度上定义的简单特征不足以说明任务中的人类表现。为了使用生物学上更合理的多尺度特征集定义机器观察者,我们在应用于图像斑块的Gabor滤波器组的整流输出上训练了标准线性和神经网络分类器。我们发现,简单的线性分类器无法与人类的表现相提并论,而将跨位置和空间范围的过滤器信息组合在一起的神经网络分类器进行了比较。这些结果证明了结合多种在多个空间尺度上定义的线索来检测自然遮挡的重要性。

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