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首页> 外文期刊>Journal of Scientific Computing >Augmented Lagrangian Method for Total Variation Based Image Restoration and Segmentation Over Triangulated Surfaces
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Augmented Lagrangian Method for Total Variation Based Image Restoration and Segmentation Over Triangulated Surfaces

机译:三角表面上基于总变异的增强拉格朗日方法

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摘要

Recently total variation (TV) regularization has been proven very successful in image restoration and segmentation. In image restoration, TV based models offer a good edge preservation property. In image segmentation, TV (or vectorial TV) helps to obtain convex formulations of the problems and thus provides global minimizations. Due to these advantages, TV based models have been extended to image restoration and data segmentation on manifolds. However, TV based restoration and segmentation models are difficult to solve, due to the nonlinearity and non-differentiability of the TV term. Inspired by the success of operator splitting and the augmented Lagrangian method (ALM) in 2D planar image processing, we extend the method to TV and vectorial TV based image restoration and segmentation on triangulated surfaces, which are widely used in computer graphics and computer vision. In particular, we will focus on the following problems. First, several Hilbert spaces will be given to describe TV and vectorial TV based variational models in the discrete setting. Second, we present ALM applied to TV and vectorial TV image restoration on mesh surfaces, leading to efficient algorithms for both gray and color image restoration. Third, we discuss ALM for vectorial TV based multi-region image segmentation, which also works for both gray and color images. The proposed method benefits from fast solvers for sparse linear systems and closed form solutions to subproblems. Experiments on both gray and color images demonstrate the efficiency of our algorithms.
机译:最近,总变异(TV)正则化已被证明在图像恢复和分割中非常成功。在图像恢复中,基于电视的模型提供了良好的边缘保留属性。在图像分割中,电视(或矢量电视)有助于获得问题的凸公式,从而提供全局最小化。由于这些优点,基于电视的模型已扩展到图像恢复和流形上的数据分割。然而,由于电视项的非线性和不可微性,基于电视的恢复和分段模型很难求解。受运算符拆分和2D平面图像处理中增强拉格朗日方法(ALM)成功的启发,我们将该方法扩展到基于TV和矢量TV的三角表面上的图像还原和分割,这些方法已广泛用于计算机图形学和计算机视觉。特别是,我们将重点关注以下问题。首先,将给出几个希尔伯特空间,以描述离散环境下基于电视和矢量电视的变化模型。其次,我们介绍ALM应用于网格表面上的电视和矢量电视图像恢复,从而为灰度和彩色图像恢复提供了有效的算法。第三,我们讨论用于基于矢量电视的多区域图像分割的ALM,它也适用于灰度和彩色图像。所提出的方法得益于稀疏线性系统的快速求解器和子问题的闭式解。在灰色和彩色图像上进行的实验证明了我们算法的效率。

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