用热扩散方程求解图像去噪

K. Lakshmi, R. Parvathy, S. Soumya, K. P. Soman
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引用次数: 6

摘要

本文的思想是使用基于偏微分方程(PDE)的方法来建模图像去噪,该方法描述了二维热扩散。取二维像函数为调和函数,可将其作为描述热扩散方程的解。为了实现这一点,图像去噪被表述为一个优化问题,其中一个有两项的函数要最小化。第一项被称为正则化项,它是图像的某种形式的能量(如Sobolev能量),第二项被称为数据保真度项,它测量原始图像和处理图像之间的相似性。这两项使用一个控制参数组合在一起,控制参数的值决定哪一项更需要最小化。然后,图像去噪问题可以通过基于梯度下降法推导的简单迭代方程来解决。
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Image denoising solutions using heat diffusion equation
The idea of this paper is to model image denoising using an approach based on partial differential equations (PDE), which describes two dimensional heat diffusion. The two dimensional image function is taken to be the harmonic, when it can be obtained as the solution to the equation describing the the heat diffusion. To achieve this, image denoising is formulated as an optimization problem, in which a function with two terms is to be minimized. The first term is called the regularization term, which is some form of energy of the image (like Sobolev energy) and the second term is called the data fidelity term, which measures the similarity between the original image and the processed image. The two terms are combined using a control parameter whose value decides which term has to be minimized more. Image denoising problem could then be solved by a simple iterative equation, derived based on the Gradient Descent method.
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