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A Blur-SURE-Based Approach to Kernel Estimation for Motion Deblurring

机译:基于模糊的运动去纹理核估计方法

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Blind motion deblurring is a highly challenging inverse problem in image processing and low-level computer vision. In this paper, we propose a novel approach to identify the parameters (blur length and orientation) of motion blur from an observed image. The kernel estimation is based on a novel criterion — the minimization of a blurred Stein’s unbiased risk estimate (blur-SURE): an unbiased estimate of a filtered mean squared error. By incorporating a simple Wiener filtering into the blur-SURE, the motion blur is estimated by minimizing this new objective functional with high accuracy. We then perform non-blind deconvolution using the high-quality SURE-LET algorithm with the estimated kernel. The results of synthetic and real experiments are quite competitive with other state-of-the-art algorithms under a wide range of degradation scenarios both numerically and visually.
机译:盲运动脱棕色是图像处理和低级计算机视觉中具有高度挑战性的逆问题。 在本文中,我们提出了一种新的方法来识别观察图像的运动模糊的参数(模糊长度和方向)。 内核估计基于一个新的标准 - 最小化模糊的斯坦因的无偏的风险估计(模糊肯定):对滤波平均平方误差的无偏估计。 通过将简单的维纳滤漏成模糊核,通过以高精度最小化这种新的目标函数来估计运动模糊。 然后,我们使用具有估计内核的高质量肯定算法进行非盲解码卷积。 合成和实验的结果与在数值和视觉上的各种劣化场景下对其他最先进的算法相当竞争。

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