Pairwise Markov random fields and its application in textured images segmentation

W. Pieczynski, A. Tebbache
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引用次数: 26

Abstract

The use of random fields, which allows one to take into account the spatial interaction among random variables in complex systems, is a frequent tool in numerous problems of statistical image processing, like segmentation or edge detection. In statistical image segmentation, the model is generally defined by the probability distribution of the class field, which is assumed to be a Markov field, and the probability distributions of the observations field conditional to the class field. In such models the segmentation of textured images is difficult to perform and one has to resort to some model approximations. The originality of our contribution is to consider the Markovianity of the pair (class field observations field). We obtain a different model; in particular, the class field is not necessarily a Markov field. The model proposed makes possible the use of Bayesian methods like MPM or MAP to segment textured images with no model approximations. In addition, the textured images can be corrupted with correlated noise. Some first simulations to validate the model proposed are also presented.
成对马尔可夫随机场及其在纹理图像分割中的应用
随机场的使用允许人们考虑复杂系统中随机变量之间的空间相互作用,是统计图像处理的许多问题中常用的工具,如分割或边缘检测。在统计图像分割中,模型一般由类域的概率分布来定义,假设类域为马尔可夫域,观测域的概率分布以类域为条件。在这种模型中,纹理图像的分割很难执行,必须借助于一些模型近似。我们贡献的独创性在于考虑了这对(类现场观测场)的马尔可夫性。我们得到了一个不同的模型;特别地,类域不一定是马尔可夫域。该模型使得使用贝叶斯方法(如MPM或MAP)在没有模型近似的情况下分割纹理图像成为可能。此外,纹理图像还会受到相关噪声的破坏。最后给出了验证该模型的初步仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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