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MR Brain Image Segmentation Based on Unsupervised and Semi-Supervised Fuzzy Clustering Methods

机译:基于无监督和半监督模糊聚类方法的先生脑图像分割

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In medical imaging applications, the segmentation of Magnetic Resonance (MR) brain images plays a crucial role for measuring and visualizing the anatomical structures of interest. In general, the brain image segmentation aims to divide the image pixels into non-overlapping homogeneous regions for analyzing the changes in the brain for surgical planning. Several supervised and unsupervised clustering methods have been developed over the years to segment the magnetic resonance brain image. However, most of these methods have certain limitations such as requiring user interaction and high computational complexity. In this context, this paper proposes a methodology that combines semi-supervised and unsupervised classification techniques for achieving efficient and fully-automatic segmentation of brain images. Firstly, the algorithm applies a median filter to remove the noise inherent in MR images prior to the clustering step. Secondly, the background of the MR image is removed by using a global thresholding technique. Thirdly, we utilize the subtractive clustering method to overcome the deficiency of randomly initialized Fuzzy C-Means (FCM) parameters. This method is used for estimating the clustering number and to generate the initial centers, which is used as initialization parameter for FCM clustering. Finally, a semi-supervised algorithm with Standard Fuzzy Clustering is selected to divide the brain MR image into different classes based on the generated membership function from FCM. The efficiency of the proposed method is demonstrated on various MR brain images and compared with some of the well-known clustering techniques.
机译:在医学成像应用中,磁共振(MR)脑图像的分割对于测量和可视化感兴趣的解剖结构起着至关重要的作用。通常,脑图像分割旨在将图像像素分成非重叠的均匀区域,用于分析大脑的变化进行手术规划。多年来已经开发了几项监督和无监督的聚类方法,以分割磁共振大脑图像。然而,大多数方法具有一定的限制,例如需要用户交互和高计算复杂性。在这种情况下,本文提出了一种结合半监督和无监督分类技术的方法,以实现脑图像的高效和全自动分割。首先,算法应用中值滤波器以在聚类步骤之前去除MR图像中固有的噪声。其次,通过使用全局阈值技术去除MR图像的背景。第三,我们利用了减法聚类方法来克服随机初始化模糊C型(FCM)参数的缺陷。此方法用于估计群集数并生成初始中心,该中心用作FCM群集的初始化参数。最后,选择具有标准模糊聚类的半监督算法,基于来自FCM的生成的成员资格函数将大脑MR图像划分为不同的类。在各种MR脑图像上证明了所提出的方法的效率,并与一些众所周知的聚类技术相比。

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