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An Adaptive Fuzzy C-Means Algorithm for Improving MRI Segmentation

机译:改进的MRI分割的自适应模糊C均值算法

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In this paper, we propose new fuzzy c-means method for improving the magnetic resonance imaging (MRI) segmenta- tion. The proposed method called “possiblistic fuzzy c-means (PFCM)” which hybrids the fuzzy c-means (FCM) and possiblistic c-means (PCM) functions. It is realized by modifying the objective function of the conventional PCM algorithm with Gaussian exponent weights to produce memberships and possibilities simultaneously, along with the usual point prototypes or cluster centers for each cluster. The membership values can be interpreted as degrees of possibility of the points belonging to the classes, i.e., the compatibilities of the points with the class prototypes. For that, the proposed algorithm is capable to avoid various problems of existing fuzzy clustering methods that solve the defect of noise sensitivity and overcomes the coincident clusters problem of PCM. The efficiency of the proposed algorithm is demonstrated by extensive segmentation experiments by applying them to the challenging applications: gray matter/white matter segmentation in magnetic resonance image (MRI) datasets and by comparison with other state of the art algorithms. The experimental results show that the proposed method produces accurate and stable results.
机译:在本文中,我们提出了一种新的模糊c均值方法来改善磁共振成像(MRI)分割。所提出的称为“可能性模糊c均值(PFCM)”的方法将模糊c均值(FCM)和可能性c均值(PCM)函数进行了混合。通过用高斯指数权重修改常规PCM算法的目标函数以同时产生隶属度和可能性以及每个聚类的常用点原型或聚类中心,可以实现该目标。隶属度值可以解释为属于类的点的可能性程度,即,点与类原型的兼容性。为此,提出的算法能够避免现有的模糊聚类方法的各种问题,解决了噪声敏感性的缺陷,克服了PCM的重合簇问题。通过将其应用到具有挑战性的应用中,通过广泛的分割实验证明了所提出算法的效率:在磁共振图像(MRI)数据集中进行灰质/白质分割,并与其他现有技术进行了比较。实验结果表明,该方法产生了准确,稳定的结果。

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