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Robust FCM clustering algorithm with combined spatial constraint and membership matrix local information for brain MRI segmentation

机译:结合空间约束和隶属矩阵局部信息的鲁棒FCM聚类算法用于脑MRI分割

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This paper presents a robust fuzzy clustering algorithm for the segmentation of brain tissues in magnetic resonance imaging (MRI). The proposed method incorporates context-aware spatial constraint and local information of the membership matrix into the fuzzy c-means (FCM) clustering algorithm. Based upon this approach, an FCM clustering algorithm with joint spatial constraint and membership matrix local information (FCMS-MLI) for brain MRI segmentation is presented, which is more robust against noise and other artifacts. The proposed spatial constraint considers both local spatial and gray-level information adaptively, and to the best of the authors' knowledge for the first time, the membership matrix local information (MLI) of fuzzy clustering is extracted to be utilized besides the spatial constraint. The proposed method solves two significant drawbacks of spatial constraint-based FCM approaches, which are ineffectiveness in preserving image details as well as confronting noise and intensity non-uniformity (INU) simultaneously. These problems are caused due to utilizing spatial constraints solely. The presented context-aware spatial constraint makes the method robust against a high level of noise while preserving image details. Furthermore, employing the MLI technique improves segmentation results in the presence of noise concurrently with INU. In contrast to spatial constraint-based methods, which just use local information in the image domain, the FCMS-MLI technique utilizes information in both image and coefficient domains. Hence, the proposed method benefits from two different sources of information. Finally, several types of images, including synthetic images, simulated and real brain MR images are utilized to make a comparison among the performances of popular FCMS types (i.e. FCM algorithms with spatial constraint), some new methods and the proposed algorithm. Experimental results prove efficiency and robustness of the FCMS-MLI algorithm confronting different levels of noise and INU. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文提出了一种鲁棒的模糊聚类算法,用于磁共振成像(MRI)中脑组织的分割。该方法将上下文感知的空间约束和隶属度矩阵的局部信息结合到模糊c均值(FCM)聚类算法中。基于这种方法,提出了一种具有联合空间约束和隶属矩阵局部信息(FCMS-MLI)的FCM聚类算法,用于脑MRI分割,该算法对噪声和其他伪像具有更强的鲁棒性。提出的空间约束自适应地考虑了局部空间信息和灰度信息,并且据作者的首次了解,提取了模糊聚类的隶属矩阵局部信息(MLI),以除空间约束之外利用。所提出的方法解决了基于空间约束的FCM方法的两个重大缺陷,即在保留图像细节方面无效以及同时面对噪声和强度不均匀性(INU)。这些问题是由于仅利用空间限制而引起的。提出的上下文感知空间约束使该方法在保留图像细节的同时,能够抵抗高水平的噪声。此外,在与INU同时存在噪声的情况下,采用MLI技术可改善分割结果。与仅在图像域中使用局部信息的基于空间约束的方法相比,FCMS-MLI技术利用图像域和系数域中的信息。因此,所提出的方法得益于两种不同的信息来源。最后,利用几种类型的图像,包括合成图像,模拟和真实的大脑MR图像,来比较流行的FCMS类型(即具有空间约束的FCM算法)的性能,一些新方法和提出的算法。实验结果证明了FCMS-MLI算法在面对不同噪声水平和INU时的效率和鲁棒性。 (C)2019 Elsevier Ltd.保留所有权利。

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