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Operator Splittings, Bregman Methods and Frame Shrinkage in?Image Processing

机译:图像处理中的算子分裂,Bregman方法和帧收缩

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摘要

We examine the underlying structure of popular algorithms for variational methods used in image processing. We focus here on operator splittings and Bregman methods based on a unified approach via fixed point iterations and averaged operators. In particular, the recently proposed alternating split Bregman method can be interpreted from different points of view—as a Bregman, as an augmented Lagrangian and as a Douglas-Rachford splitting algorithm which is a classical operator splitting method. We also study similarities between this method and the forward-backward splitting method when applied to two frequently used models for image denoising which employ a Besov-norm and a total variation regularization term, respectively. In the first setting, we show that for a discretization based on Parseval frames the gradient descent reprojection and the alternating split Bregman algorithm are equivalent and turn out to be a frame shrinkage method. For the total variation regularizer, we also present a numerical comparison with multistep methods.
机译:我们研究了用于图像处理的变分方法的流行算法的底层结构。在这里,我们将重点放在基于固定点迭代和平均算子的统一方法的算子分裂和Bregman方法上。特别是,最近提出的交替拆分Bregman方法可以从不同的角度进行解释-作为Bregman,作为扩展的Lagrangian以及作为经典算子拆分方法的Douglas-Rachford拆分算法。当将这两种方法分别应用于分别使用Besov范数和总变化正则项的两个图像去噪模型时,我们还研究了该方法与前向后向拆分方法之间的相似性。在第一种设置中,我们表明对于基于Parseval帧的离散化,梯度下降重投影和交替分裂Bregman算法是等效的,并且证明是一种帧收缩方法。对于总变化量正则化器,我们还提出了采用多步法的数值比较。

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