A new entropy-based approach for fuzzy c-means clustering and its application to brain MR image segmentation

被引:0
作者
Sayan Kahali
Jamuna Kanta Sing
Punam Kumar Saha
机构
[1] Siliguri Institute of Technology,Department of Computer Science and Engineering
[2] Jadavpur University,Department of Computer Science and Engineering
[3] University of Iowa,Department of ECE
[4] University of Iowa,Department of Radiology
来源
Soft Computing | 2019年 / 23卷
关键词
Uncertainty; Entropy; Fuzzy ; -means; Brain MR image segmentation; Gaussian probability density function;
D O I
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中图分类号
学科分类号
摘要
Automated segmentation of different tissue regions from brain magnetic resonance (MR) imaging has a substantial impact on many computer-assisted neuro-imaging studies. Major challenges to accomplish this task emerge from limited spatial resolution, signal-to-noise ratio, and RF coil inhomogeneity. These imaging artifacts lead to fuzziness of tissue boundaries and uncertainty in MR intensity-based tissue characterization at individual image voxels. The conventional fuzzy c-means (FCM) algorithm fails to produce satisfactory results for noisy image. In this paper, we present an entropy-based FCM segmentation method that incorporates the uncertainty of classification of individual pixels within the classical framework of FCM. Furthermore, instead of Euclidean distance, we have defined the non-Euclidean distance based on Gaussian probability density function. The new segmentation method was applied to Brainweb brain MR database at varying noise and inhomogeneity, and its performance was compared with existing FCM-based algorithms. The proposed method yields superior performance over some classical state-of-the-art methods. In addition to this, we also have performed the proposed method on some in vivo human brain MR data to demonstrate its performance.
引用
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页码:10407 / 10414
页数:7
相关论文
共 66 条
[1]  
Abdel-Khalek S(2017)A two-dimensional image segmentation method based on genetic algorithm and entropy Opt Int J Light Electron Opt 131 414-422
[2]  
Ishak AB(2002)A modified fuzzy IEEE Trans Med Imaging 21 193-199
[3]  
Omer OA(2017)-means algorithm for bias field estimation and segmentation on MRI data Neurocomputing 219 186-202
[4]  
Obada AS(2010)Generalized entropy based possibilistic fuzzy J Artif Intell 33 261-274
[5]  
Ahmed MN(2013)-means for clustering noisy data and its convergence proof IEEE Trans Med Imaging 32 2140-2151
[6]  
Yamany SM(2007)Review of brain MRI image segmentation methods Pattern Recognit 40 825-838
[7]  
Mohamed N(2006)Rough sets for bias correction in MR images using contraharmonic mean and quantitative index Comput Med Imaging Graph 30 9-15
[8]  
Farag AA(2017)Fast and robust fuzzy SIViP 11 541-548
[9]  
Moriaty T(2010)-means clustering algorithms incorporating local information for image segmentation Knowl Inf Syst 24 91-111
[10]  
Askari S(2015)Fuzzy Comput Intell Data Min 2 133-149