A Fully Conservative Parallel Numerical Algorithm with Adaptive Spatial Grid for Solving Nonlinear Diffusion Equations in Image Processing

A. Bulygin, D. Vrazhnov
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引用次数: 2

Abstract

In this paper we present simple yet efficient parallel program implementation of grid-difference method for solving nonlinear parabolic equations, which satisfies both fully conservative property and second order of approximation on non-uniform spatial grid according to geometrical sanity of a task. The proposed algorithm was tested on Perona–Malik method for image noise ltering task based on differential equations. Also in this work we propose generalization of the Perona–Malik equation, which is a one of diffusion in complex-valued region type. This corresponds to the conversion to such types of nonlinear equations like Leontovich–Fock equation with a dependent on the gradient field according to the nonlinear law coefficient of diffraction. This is a special case of generalization of the Perona–Malik equation to the multicomponent case. This approach makes noise removal process more flexible by increasing its capabilities, which allows achieving better results for the task of image denoising.
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基于自适应空间网格的全保守并行数值算法求解图像处理中的非线性扩散方程
本文给出了求解非线性抛物方程的网格差分法的简单而有效的并行程序实现,它既满足非均匀空间网格上的完全保守性,又满足任务的几何完整性的二阶逼近性。在基于微分方程的图像噪声滤波Perona-Malik方法上进行了实验。本文还对复值区域型扩散方程Perona-Malik方程进行了推广。这对应于根据衍射的非线性定律系数转换为诸如依赖于梯度场的莱昂托维奇-福克方程之类的非线性方程。这是将Perona-Malik方程推广到多分量情况的一个特例。这种方法通过提高其能力使去噪过程更加灵活,从而可以在图像去噪任务中获得更好的结果。
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