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首页> 外文期刊>Journal of mathematical imaging and vision >Accelerated Variational PDEs for Efficient Solution of Regularized Inversion Problems
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Accelerated Variational PDEs for Efficient Solution of Regularized Inversion Problems

机译:加速变分PDE用于有效解决正则化反演问题

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摘要

We further develop a new framework, called PDE acceleration, by applying it to calculus of variation problems defined for general functions on Rn, obtaining efficient numerical algorithms to solve the resulting class of optimization problems based on simple discretizations of their corresponding accelerated PDEs. While the resulting family of PDEs and numerical schemes are quite general, we give special attention to their application for regularized inversion problems, with particular illustrative examples on some popular image processing applications. The method is a generalization of momentum, or accelerated, gradient descent to the PDE setting. For elliptic problems, the descent equations are a nonlinear damped wave equation, instead of a diffusion equation, and the acceleration is realized as an improvement in the CFL condition from Delta t similar to Delta x2 (for diffusion) to Delta t similar to Delta x (for wave equations). We work out several explicit as well as a semi-implicit numerical scheme, together with their necessary stability constraints, and include recursive update formulations which allow minimal-effort adaptation of existing gradient descent PDE codes into the accelerated PDE framework. We explore these schemes more carefully for a broad class of regularized inversion applications, with special attention to quadratic, Beltrami, and total variation regularization, where the accelerated PDE takes the form of a nonlinear wave equation. Experimental examples demonstrate the application of these schemes for image denoising, deblurring, and inpainting, including comparisons against primal-dual, split Bregman, and ADMM algorithms.
机译:我们进一步开发了一种名为PDE加速的新框架,通过将其应用于用于RN上的一般功能定义的变化问题的微积分,获得有效的数值算法,以解决基于其相应加速PDE的简单离散化的所得到的优化问题。虽然由此产生的PDE和数值方案非常一般,但我们特别关注他们对正则化反演问题的应用,在一些流行的图像处理应用中具有特定的说明性示例。该方法是动量的概括,或加速,梯度下降到PDE设置。对于椭圆形问题,下降方程是非线性阻尼波方程,而不是扩散方程,并且加速度被实现为与类似于delta x的增量x2(用于扩散)的CFL条件的改进(对于波浪方程)。我们与其必要的稳定约束一起制定几种显式和半隐式数值方案,并且包括递归更新制剂,其允许将现有梯度下降PDE代码的最小级别适应进入加速的PDE框架。我们更仔细地探讨了广泛的正规化反转应用程序,特别注意了二次,Beltrami和总变化正则化,其中加速的PDE采用非线性波动方程的形式。实验例证证明了这些方案用于图像去噪,去掩盖和染色,包括针对对原语 - 双,分裂BREGMAN和ADMM算法的比较。

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