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Nonlocal Total Variation Based Image Deblurring Using Split Bregman Method and Fixed Point Iteration

机译:使用分裂BREGMAN方法和固定点迭代的非局部总变化的图像去孔

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Nonlocal regularization for image restoration is extensively studied in recent years. However, minimizing a nonlocal regularization problem is far more difficult than a local one and still challenging. In this paper, a novel nonlocal total variation based algorithm for image deblurring is presented. The core idea of this algorithm is to consider the latent image as the fixed point of the nonlocal total variation regularization functional. And a split Bregman method is proposed to solve the minimization problem in each fixed point iteration efficiently. By alternatively reconstructing a sharp image and updating the nonlocal gradient weights, the recovered image becomes more and more sharp. Experimental results on the benchmark problems are presented to show the efficiency and effectiveness of our algorithm.
机译:近年来广泛研究了图像恢复的非局部正则化。然而,最大限度地减少非本地正则化问题比当地的一个难度更困难,并且仍然具有挑战性。本文介绍了一种新的图像去孔算法的非局部总变化算法。该算法的核心思想是将潜像视为非识别总变化正则化功能的固定点。并提出了一种拆分BREGMAN方法,以有效地解决每个固定点迭代中的最小化问题。通过替代地重建锐利图像并更新非识别梯度权重,恢复的图像变得越来越尖锐。提出了对基准问题的实验结果,展示了算法的效率和有效性。

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