空间变化运动模糊图像的恢复

Shereen El-Shekheby, Rehab F. Abdel-Kader, F. Zaki
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引用次数: 1

摘要

各种计算机系统都需要对空间变化的模糊图像进行恢复。本文提出了一种新的空间变化模糊检测与恢复方法。从单个图像自动检测运动模糊。首先,通过找到使模糊局部窗口的可能性最大化的核来估计模糊核的长度和方向。这是通过结合不同长度的垂直或正对角线内核来实现的。然后,使用特定于内核的特征估计初始模糊区域。其次,利用图像分割(CCP)方法和相邻信息对初始模糊区域进行细化;最后,利用最优估计核恢复模糊区域。与文献中报道的最成功的方法比较,证明了模糊检测和恢复结果的性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Restoration of Spatially-Varying Motion-Blurred Images
Restoration of spatially-varying blurred images is extensively required for various computer systems. In this paper, we present a new spatially-varying blur detection and restoration method. Motion blur is detected automatically from an individual image. Initially, the blurring kernel length and direction are estimated by finding the kernel that maximizes the likelihood of a blurred local window. This is achieved by incorporating either vertical or positive diagonal kernels with various lengths. Then, initial blur regions are estimated using a kernel specific feature. Next, the initial blur regions are refined with the support of the image segmentation (CCP) method and neighboring information. Finally, Blurred regions are recovered using the best-estimated kernel. Comparisons with the most successful methods reported in the literature demonstrate performance improvements in blur detection and restoration results.
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