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Robust kernelized local information fuzzy C-means clustering for brain magnetic resonance image segmentation

机译:鲁棒核化局部信息模糊C均值聚类用于脑磁共振图像分割

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摘要

Brain tissue segmentation from magnetic resonance (MR) images is an importance task for clinical use. The segmentation process becomes more challenging in the presence of noise, grayscale inhomogeneity, and other image artifacts. In this paper, we propose a robust kernelized local information fuzzy C-means clustering algorithm (RKLIFCM). It incorporates local information into the segmentation process (both grayscale and spatial) for more homogeneous segmentation. In addition, the Gaussian radial basis kernel function is adopted as a distance metric to replace the standard Euclidean distance. The main advantages of the new algorithm are: efficient utilization of local grayscale and spatial information, robustness to noise, ability to preserve image details, free from any parameter initialization, and with high speed as it runs on image histogram. We compared the proposed algorithm with 7 soft clustering algorithms that run on both image histogram and image pixels to segment brain MR images. Experimental results demonstrate that the proposed RKLIFCM algorithm is able to overcome the influence of noise and achieve higher segmentation accuracy with low computational complexity.
机译:从磁共振(MR)图像进行脑组织分割是临床使用的重要任务。在存在噪声,灰度不均匀和其他图像伪影的情况下,分割过程变得更具挑战性。在本文中,我们提出了一种鲁棒的核化局部信息模糊C均值聚类算法(RKLIFCM)。它将局部信息纳入分割过程(灰度和空间),以实现更均匀的分割。另外,采用高斯径向基核函数作为距离度量来代替标准的欧几里得距离。新算法的主要优点是:有效利用局部灰度和空间信息,对噪声的鲁棒性,保留图像细节的能力,无需任何参数初始化以及在图像直方图上运行时具有很高的速度。我们将提出的算法与同时在图像直方图和图像像素上运行以分割大脑MR图像的7种软聚类算法进行了比较。实验结果表明,所提出的RKLIFCM算法能够克服噪声的影响,以较低的计算复杂度实现较高的分割精度。

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