基于Radon变换的均匀和非均匀运动模糊参数估计

A. Deshpande, S. Patnaik
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引用次数: 7

摘要

从匀速运动模糊中恢复单个退化图像最近在许多基于机器视觉的应用中得到了研究,包括天文学、医学成像、消费级摄影、显微镜等。从单个模糊图像中识别运动模糊参数确实是一个不适定问题,因为估计的模糊核和模糊图像组合有多个解,其中实际的组合几乎没有,这将导致恢复图像的忠实质量。恢复的质量也高度依赖于点扩散函数核估计的精度。本文提出了一种基于Radon变换的运动模糊参数估计方法,同时考虑了空间不变和变模糊。对模拟运动模糊图像的实验表明,对模糊图像的光谱梯度进行Radon变换,即使存在噪声,也能提高估计精度。与现有的基于Radon变换的PSF估计方法相比,该方法即使对典型的非均匀运动模糊图像也能成功地进行PSF估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radon transform based uniform and non-uniform motion blur parameter estimation
Restoration of a single degraded image from uniform velocity motion blurring is recently being studied in number of machine vision based applications including astronomy, medical imaging, consumer level photography, microscopy etc. Identification of motion blur parameters from single blurred image is truly an ill-posed problem, as there results multiple solutions in terms of estimated blur kernel and blurred image combinations, amongst which actual combination is hardly any, that will result into a faithful quality of restored image. The quality of restoration is also highly dependent on the accuracy of point spread function (PSF) kernel estimation. In this paper, we present a Radon transform based motion blur parameter estimation method under both spatial-invariant and variant blur consideration. The experiments performed on simulated motion blurred images show that taking Radon transform of the spectral gradients of blurred images improve estimation accuracy even in presence of noise. Compared with already existing Radon transform based PSF estimation schemes, our method successfully performs PSF estimation even for typical non-uniform motion blurred imagery.
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