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Statistical image segmentation using Triplet Markov fields

机译:使用三重态马尔可夫场进行统计图像分割

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Hidden Markov fields (HMF) are widely used in image processing. In such models, the hidden random field of interest X = (X_s)_(s∈S) is a Markov field, and the distribution of the observed random field Y = (Y_s)_(s∈S) (conditional on X ) is given by p(y|x) =Π_(s∈S)p(y_s|x_s). The posterior distribution p(x|y) is then a Markov distribution, which affords different Bayesian processing. However, when dealing with the segmentation of images containing numerous classes with different textures, the simple form of the distribution p(y|x) above is insufficient and has to be replaced by a Markov field distribution. This poses problems, because taking p(y|x) Markovian implies that the posterior distribution p(x|y), whose Markovianity is needed to use Bayesian techniques, may no longer be a Markov distribution, and so different model approximations must be made to remedy this. This drawback disappears when considering directly the Markovianity of (X,Y); in these recent "Pairwise Markov Fields (PMF) models, both p(y|x) and p(x|y) arc then Markovian, the first one allowing us to model textures, and the second one allowing us to use Bayesian restoration without model approximations. In this paper we generalize the PMF to Triplet Markov Fields (TMF) by adding a third random field U = (U_s)_(s∈S) and considering the Markovianity of (X,U,Y). We show that in TMF X is still estimable from Y by Bayesian methods. The parameter estimation with Iterative Conditional Estimation (ICE) is specified and we give some numerical results showing how the use of TMF can improve the classical HMF based segmentation.
机译:隐马尔可夫场(HMF)广泛用于图像处理。在这样的模型中,感兴趣的隐藏随机场X =(X_s)_(s∈S)是马尔可夫场,并且观察到的随机场Y =(Y_s)_(s∈S)的分布(以X为条件)由p(y | x)=Π_(s∈S)p(y_s | x_s)给出。然后,后验分布p(x | y)是马尔可夫分布,可提供不同的贝叶斯处理。但是,当处理包含大量具有不同纹理的类别的图像的分割时,上述分布p(y | x)的简单形式不足,必须用马尔可夫场分布代替。这带来了问题,因为采用p(y | x)马尔可夫表示意味着使用贝叶斯技术需要马尔可夫性的后验分布p(x | y)可能不再是马尔可夫分布,因此必须进行不同的模型近似对此进行补救。当直接考虑(X,Y)的马尔可夫性时,这个缺点消失了。在这些最近的“ Pairwise Markov Fields(PMF)”模型中,p(y | x)和p(x | y)都是Markovian,第一个模型允许我们对纹理进行建模,第二个模型允许我们使用贝叶斯恢复而不使用在本文中,我们通过添加第三个随机场U =(U_s)_(s∈S)并考虑(X,U,Y)的马尔可夫性,将PMF推广到三重马氏场(TMF)。 TMF中的X仍然可以通过贝叶斯方法从Y估计,使用迭代条件估计(ICE)进行参数估计,并给出一些数值结果,表明使用TMF可以改善传统的基于HMF的分割。

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