深度感知运动去模糊

Li Xu, Jiaya Jia
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引用次数: 95

摘要

对深度变化场景中捕获的图像进行运动去模糊需要估计空间变化点扩展函数(psf)。我们用立体视觉配置来解决这个问题,使用深度信息来帮助去除模糊。我们观察到,将模糊图像划分为区域并分别估计其PSF的简单方案可能会使小尺寸区域缺乏必要的结构信息来指导PSF估计,因此提出了区域树对其进行分层估计。基于自然图像的冲击滤波不变性,提出了一种新的PSF选择方案。我们的框架也适用于一般的单图像空间变化去模糊。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Depth-aware motion deblurring
Motion deblurring from images that are captured in a scene with depth variation needs to estimate spatially-varying point spread functions (PSFs). We tackle this problemwith a stereopsis configuration, using depth information to help blur removal. We observe that the simple scheme to partition the blurred images into regions and estimate their PSFs respectively may make small-size regions lack necessary structural information to guide PSF estimation and accordingly propose region trees to hierarchically estimate them. Erroneous PSFs are rejected with a novel PSF selection scheme, based on the shock filtering invariance of natural images. Our framework also applies to general single-image spatially-varying deblurring.
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