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Development of fuzzy clustering based unsupervised scheme for medical image segmentation using HMRF model

机译:基于HMRF模型的医学图像分割的基于模糊聚类的模糊聚类的开发

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In this paper, the problem of medical image segmentation is addressed in an unsupervised framework. We propose a novel method considering the hidden Markov random field model (HMRF) to model the image class labels, which takes into account the mutual influences of neighboring sites formulated on the basis of fuzzy clustering principle. The model parameters, number of class labels and the image labels are assumed to be unknown. Here an attempt has been made to incorporate the benefits of HMRF model into the benefits of fuzzy clustering procedure. To combine the spatial coherency modeling capabilities of the HMRF model and the enhanced flexibility obtained by fuzzy c-means (FCM) algorithm, fuzzy clustering expectation maximization (FCEM) algorithm is proposed. The initial model parameters are assumed arbitrarily unlike existing methods. Both model parameters as well as class labels of medical images are estimated recursively using proposed algorithm until the model parameters converge to the optimal ones. The proposed HMRF-FCEM segmentation scheme is validated with various noisy medical images. We experimentally demonstrate the superiority of the proposed approach over the existing HMRF-EM framework applied to medical image segmentation. The proposed scheme does not depend on the initial choice of model parameters and can be applied for automatic medical image analysis.
机译:在本文中,在无监督的框架中解决了医学图像分割问题。我们提出了一种小说考虑隐藏的马尔可夫随机现场模型(HMRF)来模拟图像类标签的新方法,这考虑了在模糊聚类原理的基础上制定了相邻站点的相互影响。假设模型参数,类标签数和图像标签是未知的。这里已经尝试将HMRF模型的好处纳入模糊聚类程序的好处。为了结合HMRF模型的空间一致性建模能力和通过模糊C型算法(FCM)算法获得的增强灵活性,提出了模糊聚类预期最大化(FCEM)算法。假设初始模型参数与现有方法是任意的。使用所提出的算法递归地估计模型参数以及医学图像的类标签,直到模型参数会聚到最佳算法。提出的HMRF-FCEM分段方案用各种嘈杂的医学图像验证。我们通过实验证明所提出的方法的优越性,对应用于医学图像分割的现有HMRF-EM框架。该方案不依赖于模型参数的初始选择,并且可以应用于自动医学图像分析。

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