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Depth-aware motion deblurring

机译:深度感知运动去模糊

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摘要

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.
机译:从具有深度变化的场景中捕获的图像中消除运动模糊,需要估计空间变化点扩展函数(PSF)。我们通过立体配置来解决此问题,它使用深度信息来帮助模糊去除。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区域缺少必要的结构信息来指导PSF估计,并因此提出了区域树来对其进行分层估计。基于自然图像的冲击滤波不变性,采用新颖的PSF选择方案可以拒绝错误的PSF。我们的框架还适用于一般的单图像空间变化去模糊。

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