论文标题
医学图像的扩散方程
Diffusion Equations for Medical Images
论文作者
论文摘要
在大脑成像中,图像采集和处理过程本身可能会向图像引入噪声。因此,必须在保留各种应用的解剖结构的几何细节的同时降低噪声。传统上,高斯内核平滑经常用于大脑图像处理和分析。但是,高斯内核平滑的直接应用倾向于在具有边界的不规则域中引起各种数值问题。例如,如果一个人在皮质边界区域中使用核心平滑的大带宽,则平滑性会模糊跨边界。因此,在内核平滑和回归文献中,引入了各种临时程序以纠正边界效应。扩散方程已被广泛用于大脑成像作为降噪形式。在具有边界的不规则域中平滑图像的最自然的方式是使用部分微分方程提出问题为边界值问题。图像处理中已经开发了许多基于扩散的技术。在本文中,我们将概述各向同性扩散方程的基础,并解释如何在常规网格和不规则网格(例如图)上解决它们。
In brain imaging, the image acquisition and processing processes themselves are likely to introduce noise to the images. It is therefore imperative to reduce the noise while preserving the geometric details of the anatomical structures for various applications. Traditionally Gaussian kernel smoothing has been often used in brain image processing and analysis. However, the direct application of Gaussian kernel smoothing tend to cause various numerical issues in irregular domains with boundaries. For example, if one uses large bandwidth in kernel smoothing in a cortical bounded region, the smoothing will blur signals across boundaries. So in kernel smoothing and regression literature, various ad-hoc procedures were introduce to remedy the boundary effect. Diffusion equations have been widely used in brain imaging as a form of noise reduction. The most natural straightforward way to smooth images in irregular domains with boundaries is to formulate the problem as boundary value problems using partial differential equations. Numerous diffusion-based techniques have been developed in image processing. In this paper, we will overview the basics of isotropic diffusion equations and explain how to solve them on regular grids and irregular grids such as graphs.