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Iterative parameter-choice and multigrid methods for anisotropic diffusion denoising

机译:各向异性扩散去噪的迭代参数选择和多重网格方法

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Anisotropic diffusion methods are well known for giving good qualitative results for image denoising. This paper gives a review of the anisotropic diffusion methodology and its application to image denoising. We propose a fixed-point iteration using a multigrid solver to solve a regularized anisotropic diffusion equation, which is not only well-posed, but also has a nontrivial steady-state solution. A new regularization parameter-choice method (Brent-NCP), combining Brent's method and the normalized cumulative periodogram information of the misfit, is also introduced. We test our algorithm on several common test images with different noise levels. The experimental results demonstrate the effectiveness of the anisotropic diffusion with a multigrid approach and the broad applicability of the Brent-NCP parameter-choice algorithm.
机译:各向异性扩散方法为图像降噪提供了良好的定性结果,这是众所周知的。本文综述了各向异性扩散方法及其在图像去噪中的应用。我们提出了使用多网格求解器的定点迭代来求解正则化各向异性扩散方程,该方程不仅位置良好,而且具有非平凡的稳态解。还介绍了一种新的正则化参数选择方法(Brent-NCP),该方法将Brent方法与失配的归一化累积周期图信息相结合。我们在具有不同噪声水平的几个常见测试图像上测试我们的算法。实验结果证明了采用多网格方法进行各向异性扩散的有效性以及Brent-NCP参数选择算法的广泛适用性。

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