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A regularization model with adaptive diffusivity for variational image denoising

机译:自适应扩散系数的正则化模型用于变分图像去噪

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摘要

In this paper, motivated by approximating the Euler-Lagrange equation of thepth-order regularization for 0 < p ≤ 1, we propose a new regularization model with adaptive diffusivity for variational image denoising. The model is equipped with a regularization controller which is introduced to adaptively adjust the diffusivity from pixel to pixel according to the magnitude of image gradient. The associated energy functional is convex and thus the minimization problem can be efficiently solved using a modified split Bregman iterative scheme. A convergence analysis of the iterative scheme is established. Numerical experiments are performed to demonstrate the good performance of the proposed model. Comparisons with some other image denoising models are also made.
机译:本文通过近似0 by ≤1的p阶正则化的Euler-Lagrange方程,提出了一种自适应扩散性的正则化模型,用于变分图像去噪。该模型配备了正则化控制器,该控制器被引入以根据图像梯度的大小自适应地调整像素之间的扩散率。关联的能量函数是凸的,因此可以使用改进的拆分Bregman迭代方案有效地解决最小化问题。建立了迭代方案的收敛性分析。进行数值实验以证明所提出模型的良好性能。还与其他一些图像去噪模型进行了比较。

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