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Partial differential equations in image analysis: Continuous modeling, discrete processing

机译:图像分析中的偏微分方程:连续建模,离散处理

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This paper presents an overview of selected topics from an emerging new image analysis methodology that starts from continuous models provided by partial differential equations (PDEs) and proceeds with discrete processing of the image data via the numerical implementation of these PDEs on some discrete grid. We briefly discuss basic ideas, examples, algorithms, and applications for PDEs modeling nonlinear multiscale analysis, geometric evolution of curves and signals, nonlinear image/signal restoration via shock filtering, and the eikonal PDE of optics. Wherever possible, we compare the PDE approach with the corresponding all-discrete method. The PDE approach is very promising for solving (or improving previous all-discrete solutions of) many problems in image processing and computer vision because it provides new and more intuitive mathematical models, has connections with physics, gives better approximations to the Euclidean geometry of the problem, and is supported by efficient discrete numerical algorithms based on difference approximations.
机译:本文介绍了一种新兴的新图像分析方法中选定主题的概述,该方法从偏微分方程(PDE)提供的连续模型开始,并通过这些PDE在某些离散网格上的数值实现进行图像数据的离散处理。我们简要讨论了用于PDE建模非线性多尺度分析,曲线和信号的几何演化,通过冲击滤波的非线性图像/信号恢复以及光学的PDE的基本思想,示例,算法和应用。只要有可能,我们都会将PDE方法与相应的全离散方法进行比较。 PDE方法对于解决(或改善以前的全离散解决方案)图像处理和计算机视觉中的许多问题非常有前途,因为它提供了新的,更直观的数学模型,与物理学有联系,可以更好地近似欧氏几何。问题,并由基于差分近似的高效离散数值算法支持。

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