单幅模糊图像中基于UNLM PSF估计的高效倒谱分析

Yuta Shimamoto, Qian Chen, Haiyuan Wu, Xiang Ruan, Hikaru Matsumoto
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引用次数: 1

摘要

提出一种基于倒谱分析的均匀非线性运动(UNLM)点扩散函数(PSF)估计算法。我们的工作有两个贡献。首先,该算法不需要像传统算法那样穷尽地选择候选PSF,只需评估一个PSF及其对称形状即可进行最终决策。其次,我们对如何将传统的均匀线性运动(ULM) PSF算法扩展到UNLM PSF估计进行了理论推理,这是迄今为止没有得到明确解释的。通过仿真和真实图像验证了该算法的有效性。实验中还提出了提高相关工作定量精度的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient cepstrum analysis based UNLM PSF estimation in single blurred image
We propose a new Uniform Non-linear Motion (UNLM) Point Spread Function (PSF) estimation algorithm based on cepstrum analysis. Our work has two contributions. First, the algorithm does not need an exhaustive selection of candidate PSFs as conventional algorithm does, only one PSF and its symmetric shape are evaluated for final decision. Second, we give theoretical reasoning, which was not clearly interpreted so far, on how to extent conventional Uniform Linear Motion (ULM) PSF algorithm to UNLM PSF estimation. We show the effectiveness of the proposed algorithm by both simulation and real images. Quantitative accuracy improvement to related work is also presented in the experiments.
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