Image filtering by gradient inverse inhomogeneous diffusion

A. El-Fallah, G. Ford
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引用次数: 4

Abstract

A method is developed for the synthesis of a nonlinear adaptive filter based on solutions to the inhomogeneous diffusion equation. The approach is based on the specification of the first derivative of the signal in time (scale). A general solution is derived and is then specialized to the scale invariance case, in which the diffusion coefficient is shown to be the gradient inverse. A novel discrete realization of the inhomogeneous diffusion equation is developed for the noise removal problem, and experimental results are shown. The proposed algorithm not only removes noise but simultaneously enhances and localizes edges. It is extremely simple and parallel, and does not require the detection of any of the many possible line and edge configurations. Since the algorithm is sensitive to the local context, it satisfies human vision requirements more than conventional methods which rely on minimizing the mean square error.<>
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梯度逆非均匀扩散图像滤波
提出了一种基于非齐次扩散方程解的非线性自适应滤波器的合成方法。该方法是基于信号在时间(尺度)上的一阶导数的规范。导出了通解,然后专门用于尺度不变性情况,其中扩散系数显示为梯度逆。针对消噪问题,提出了一种新的非齐次扩散方程的离散实现方法,并给出了实验结果。该算法在去除噪声的同时,对边缘进行增强和定位。它是非常简单和平行的,不需要检测任何许多可能的线和边的配置。由于该算法对局部环境敏感,因此比传统的依赖于均方误差最小化的方法更能满足人类的视觉需求。
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