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A Generic Approach to the Filtering of Matrix Fields with Singular PDEs

机译:奇异PDE矩阵域滤波的通用方法

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There is an increasing demand to develop image processing tools for the filtering and analysis of matrix-valued data, so-called matrix fields. In the case of scalar-valued images parabolic partial differential equations (PDEs) are widely used to perform filtering and denois-ing processes. Especially interesting from a theoretical as well as from a practical point of view are PDEs with singular diffusivities describing processes like total variation (TV-)diffusion, mean curvature motion and its generalisation, the so-called self-snakes. In this contribution we propose a generic framework that allows us to find the matrix-valued counterparts of the equations mentioned above. In order to solve these novel matrix-valued PDEs successfully we develop truly matrix-valued analogs to numerical solution schemes of the scalar setting. Numerical experiments performed on both synthetic and real world data substantiate the effectiveness of our matrix-valued, singular diffusion filters.
机译:越来越需要开发用于对矩阵值数据(即所谓的矩阵域)进行过滤和分析的图像处理工具。在标量值图像的情况下,抛物线偏微分方程(PDE)被广泛用于执行滤波和去噪处理。从理论和实践的角度来看,特别有趣的是具有奇异扩散性的PDE,它们描述了诸如总变化(TV)扩散,平均曲率运动及其推广等过程,即所谓的自蛇行。在本文中,我们提出了一个通用框架,该框架使我们能够找到上述方程式的矩阵值对应物。为了成功解决这些新颖的矩阵值PDE,我们将真正的矩阵值类似物开发为标量设置的数值解方案。对合成数据和现实世界数据进行的数值实验证实了我们的矩阵值奇异扩散滤波器的有效性。

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