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On a general smoothly truncated regularization for variational piecewise constant image restoration: construction and convergent algorithms

机译:关于变分常量图像恢复的一般平滑截断正则化:施工和收敛算法

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摘要

Image restoration is a typical inverse problem, and piecewise constant images have extensive applications in industry and business. Variational models with nonconvex, nonsmooth regularizations can achieve high-quality restorations with neat edges. In particular, a class of truncated potential functions effectively supports contrast-preserving restoration. However, these functions are not subdifferentially regular and thus yield no variational or convergence results for minimization algorithms. In this paper, we present a general smoothing scheme to overcome this nonregularity of the existing truncated regularizers. We also propose globally convergent algorithms to solve the noncoercive variational models with our new smoothly truncated regularizer (STR) functions by introducing a novel proximal term. The limit point of the iterative sequence is shown to be a -stationary point of the original objective function. We then give the implementation details for the inner subproblem by the alternating direction method of multipliers (ADMM). Numerical experiments are carried out to illustrate the good ability of the new regularizer to preserve neat edges and contrasts for piecewise constant images.
机译:图像恢复是典型的逆问题,分段恒定图像在工业和业务方面具有广泛的应用。具有非透露性的变形模型,非现成的正常化可以通过整齐的边缘实现高质量的修复体。特别地,一类截短的潜在功能有效地支持对比度保留恢复。然而,这些功能不会常规,因此不会产生最小化算法的变分或收敛结果。在本文中,我们介绍了一般的平滑方案,以克服现有截短的校长的这种非法性。我们还提出了全局收敛算法,通过引入新颖的近期术语来解决新的平滑截断规范器(STR)功能来解决非自由化变化模型。迭代序列的限制点被示出为原始目标函数的间隔开。然后,我们通过乘法器(ADMM)的交替方向方法给出内部子问题的实现细节。进行了数值实验,以说明新规范器以保护分段恒定图像的纯正边缘和对比度的良好能力。

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