Parameter Estimation in Hidden Fuzzy Markov Random Fields and Image Segmentation

Fabien Salzenstein, Wojciech Pieczynski
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引用次数: 133

Abstract

This paper proposes a new unsupervised fuzzy Bayesian image segmentation method using a recent model using hidden fuzzy Markov fields. The originality of this model is to use Dirac and Lebesgue measures simultaneously at the class field level, which allows the coexistence of hard and fuzzy pixels in a same picture. We propose to solve the main problem of parameter estimation by using of a recent general method of estimation in the case of hidden data, called iterative conditional estimation (ICE), which has been successfully applied in classical segmentation based on hidden Markov fields. The first part of our work involves estimating the parameters defining the Markovian distribution of the noise-free fuzzy picture. We then combine this algorithm with the ICE method in order to estimate all the parameters of the fuzzy picture corrupted with noise. Last, we combine the parameter estimation step with two segmentation methods, resulting in two unsupervised statistical fuzzy segmentation methods. The efficiency of the proposed methods is tested numerically on synthetic images and a fuzzy segmentation of a real image of clouds is studied.

隐模糊马尔可夫随机场参数估计与图像分割
本文提出了一种新的基于隐模糊马尔可夫域的无监督模糊贝叶斯图像分割方法。该模型的独创性在于在类场水平上同时使用狄拉克和勒贝格度量,从而允许在同一幅图像中同时存在硬像素和模糊像素。本文提出了一种新的通用估计方法,即迭代条件估计(ICE),该方法已成功地应用于基于隐马尔可夫域的经典分割中,以解决隐藏数据情况下参数估计的主要问题。我们的工作的第一部分涉及估计参数,定义无噪声模糊图像的马尔可夫分布。然后,我们将该算法与ICE方法相结合,以估计被噪声破坏的模糊图像的所有参数。最后,将参数估计步骤与两种分割方法相结合,得到两种无监督统计模糊分割方法。在合成图像上对所提方法的有效性进行了数值验证,并对真实云图的模糊分割进行了研究。
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