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Implementation of high-order variational models made easy for image processing

机译:高阶变分模型的实现使图像处理变得容易

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High-order variational models are powerful methods for image processing and analysis, but they can lead to complicated high-order nonlinear partial differential equations that are difficult to discretise to solve computationally. In this paper, we present some representative high-order variational models and provide detailed descretisation of these models and numerical implementation of the split Bregman algorithm for solving these models using the fast Fourier transform. We demonstrate the advantages and disadvantages of these high-order models in the context of image denoising through extensive experiments. The methods and techniques can also be used for other applications, such as image decomposition, inpainting and segmentation. Copyright (C) 2016 John Wiley & Sons, Ltd.
机译:高阶变分模型是进行图像处理和分析的强大方法,但它们可能导致复杂的高阶非线性偏微分方程,难以离散化求解。在本文中,我们提出了一些具有代表性的高阶变分模型,并提供了这些模型的详细说明以及使用快速傅里叶变换求解这些模型的斯普利特Bregman算法的数值实现。通过大量的实验,我们在图像去噪的背景下证明了这些高阶模型的优缺点。该方法和技术还可以用于其他应用,例如图像分解,修复和分割。版权所有(C)2016 John Wiley&Sons,Ltd.

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