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Non-stationary fuzzy Markov chain

机译:非平稳模糊马尔可夫链

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This paper deals with a recent statistical model based on fuzzy Markov random chains for image segmentation, in the context of stationary and non-stationary data. On one hand, fuzzy scheme takes into account discrete and continuous classes through the modeling of hidden data imprecision and on the other hand, Markovian Bayesian scheme models the uncertainty on the observed data. A non-stationary fuzzy Markov chain model is proposed in an unsupervised way, based on a recent Markov triplet approach. The method is compared with the stationary fuzzy Markovian chain model. Both stationary and non-stationary methods are enriched with a parameterized joint density, which governs the attractiveness of the neighbored states. Segmentation task is processed with Bayesian tools, such as the well known MPM (Mode of Posterior Marginals) criterion. To validate both models, we perform and compare the segmentation on synthetic images and raw optical patterns which present diffuse structures.
机译:本文研究了一种基于模糊马尔可夫随机链的最新统计模型,用于在固定和非固定数据的情况下进行图像分割。一方面,模糊方案通过隐藏数据不精确度的建模考虑了离散和连续类,另一方面,马尔可夫贝叶斯方案对观测数据的不确定性进行建模。基于最近的马尔可夫三重态方法,提出了一种非平稳的模糊马尔可夫链模型。将该方法与平稳模糊马尔可夫链模型进行了比较。固定方法和非固定方法都通过参数化的联合密度进行了丰富,该密度控制了邻域的吸引力。细分任务是使用贝叶斯工具(例如众所周知的MPM(后边缘模式)标准)处理的。为了验证这两个模型,我们在合成图像和原始光学图案上进行了分割,并比较了它们的漫射结构。

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