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Entropy estimation for robust image segmentation in presence of non Gaussian noise

机译:在非高斯噪声存在下鲁棒图像分割的熵估计

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In this work we introduce a new approach for robust image segmentation. The idea is to combine two strategies within a Bayesian framework. The first one is to use a Markov Random Field (MRF), which allows to introduce prior information with the purpose of preserve the edges in the image. The second strategy comes from the fact that the probability density function (pdf) of the likelihood function is non Gaussian or unknown, so it should be approximated by an estimated version, and for this, it is used the classical non-parametric or kernel density estimation. This two strategies together lead us to the definition of a new maximum a posteriori (MAP) approach based on the minimization of the entropy of the estimated pdf of the likelihood function and the MRF at the same time, named MAP entropy estimator (MAPEE). Some experiments were conducted for different kind of images degraded with impulsive noise and other non-Gaussian distributions, where the segmentation results are very satisfactory comparing them with respect to recent robust approaches based on the fuzzy c-means (FCM) segmentation.
机译:在这项工作中,我们向强大的图像分割引入了一种新方法。这个想法是将两种策略结合在贝叶斯框架内。第一个是使用马尔可夫随机字段(MRF),这允许引入先前的信息,其目的是保留图像中的边缘。第二策略来自概率函数的概率密度函数(PDF)是非高斯或未知的事实,因此它应该近似估计的版本,并且为此,它被使用了经典的非参数或内核浓度估计。这两个策略在一起引导我们基于最小化似然函数和MRF的估计PDF的熵的最大限度地引导了新的最大后验(MAP)方法的定义,同时命名为Map熵估计器(Mapee)。对于不同种类的图像进行了一些实验,其利用脉冲噪声和其他非高斯分布劣化,其中分割结果非常令人满意,比较基于模糊C-Mance(FCM)分割的近期强大方法。

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