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A Novel Search Approach for Blur Kernel Estimation of Defocused Image Restoration

机译:一种新的散焦图像模糊核估计搜索方法

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摘要

In this letter, we propose a novel search approach to blur kernel estimation for defocused image restoration. An adaptive binary search on consensus is the main contribution of our research. It is based on binary search and random sample consensus set (RANSAC). Moreover an evaluating function which uses a histogram of gradient distribution is proposed for assessing restored images. Simulations on an image benchmark dataset shows that the proposed algorithm can estimate, on average, the blur kernels 15.14% more accurately than other defocused image restoration algorithms.
机译:在这封信中,我们提出了一种新颖的搜索方法来模糊内核估计,以实现散焦图像恢复。对共识的自适应二进制搜索是我们研究的主要贡献。它基于二进制搜索和随机样本共识集(RANSAC)。此外,提出了一种使用梯度分布直方图的评估函数,用于评估恢复的图像。在图像基准数据集上的仿真表明,与其他散焦图像恢复算法相比,所提出的算法平均可以更准确地估计模糊核15.14%。

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