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On defocus, diffusion and depth estimation

机译:关于散焦,扩散和深度估计

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An intrinsic property of real aperture imaging has been that the observations tend to be defocused. This artifact has been used in an innovative manner by researchers for depth estimation, since the amount of defocus varies with varying depth in the scene. There have been various methods to model the defocus blur. We model the defocus process using the model of diffusion of heat. The diffusion process has been traditionally used in low level vision problems like smoothing, segmentation and edge detection. In this paper a novel application of the diffusion principle is made for generating the defocus space of the scene. The defocus space is the set of all possible observations for a given scene that can be captured using a physical lens system. Using the notion of defocus space we estimate the depth in the scene and also generate the corresponding fully focused equivalent pin-hole image. The algorithm described here also brings out the equivalence of the two modalities, viz. depth from focus and depth from defocus for structure recovery.
机译:实际光圈成像的固有特性是观察结果趋于散焦。研究人员以一种创新的方式将这种伪影用于深度估计,因为散焦的量随场景深度的变化而变化。有多种方法可以对散焦模糊进行建模。我们使用热扩散模型对散焦过程进行建模。传统上,漫射过程已用于低级视觉问题,如平滑,分割和边缘检测。在本文中,扩散原理的一种新颖应用被用于生成场景的散焦空间。散焦空间是可以使用物理镜头系统捕获的给定场景的所有可能观察值的集合。使用散焦空间的概念,我们可以估计场景中的深度,并生成相应的完全聚焦的等效针孔图像。这里描述的算法还得出了两种模态的等效性。聚焦的深度和散焦的深度,以恢复结构。

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