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A fast image recovery algorithm based on splitting deblurring and denoising

机译:基于分割去模糊和去噪的快速图像恢复算法

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In this paper, we employ a popular splitting strategy to design a fast iterative algorithm for image restoration. We divide the algorithm into two steps, i.e., deblurring step and denoising step. In the deblurring step, Fourier transform is employed for image deblurring under the periodic boundary condition. In the denoising step, we use a simple and fast method, called fast iterative shrinkage/thresholding algorithm (FISTA), to reduce image noise. In addition, we also give the convergence analysis for the proposed method. Visual and quantitative results demonstrate the proposed algorithm, applied to l(1) regularization model and total-variation (TV) regularization model, is a faster algorithm and keeps image details well. (C) 2015 Elsevier B.V. All rights reserved.
机译:在本文中,我们采用一种流行的分割策略来设计用于图像恢复的快速迭代算法。我们将算法分为两个步骤,即去模糊步骤和去噪步骤。在去模糊步骤中,采用傅立叶变换在周期性边界条件下对图像进行去模糊。在降噪步骤中,我们使用一种称为快速迭代收缩/阈值算法(FISTA)的简单快速的方法来减少图像噪声。另外,我们还给出了该方法的收敛性分析。视觉和定量结果表明,该算法适用于l(1)正则化模型和总变异(TV)正则化模型,是一种更快的算法,可以很好地保留图像细节。 (C)2015 Elsevier B.V.保留所有权利。

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