基于信息论的噪声图像分割方法

F. Galland, P. Réfrégier
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引用次数: 0

摘要

在本报告中,我们建议讨论基于随机复杂度最小化的分割技术的一些有趣的特性。我们强调了最小化随机复杂性为分割目的提供的一般框架,它的一些主要优点和一些激励的观点,这些方法是开放的。我们用我们的研究小组用多边形参数形状描述、轮廓的水平集模型和多边形网格将图像划分为任意数量的均匀区域来说明这个演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of noisy images using information theory based approaches
In this presentation, we propose to discuss some interesting properties of segmentation techniques based on the minimization of the stochastic complexity. We emphasize the general framework provided by the minimization of the stochastic complexity for segmentation purpose, some of its main advantages and also some of the motivating perspectives that are open by such approaches. We illustrate this presentation with different results obtained in our research group with polygonal parametric shape descriptions, level set models of contours and polygonal grids to partition images into an arbitrary number of homogeneous regions.
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