A Novel Model-Based Approach for Medical Image Segmentation Using Spatially Constrained Inverted Dirichlet Mixture Models

被引:0
作者
Wentao Fan
Can Hu
Jixiang Du
Nizar Bouguila
机构
[1] Huaqiao University,Department of Computer Science and Technology
[2] Concordia University,Concordia Institute for Information Systems Engineering (CIISE)
来源
Neural Processing Letters | 2018年 / 47卷
关键词
Mixture models; Variational Bayes; Image segmentation; MRI image; Inverted Dirichlet;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, we present a novel statistical approach to medical image segmentation. This approach is based on finite mixture models with spatial smoothness constrains. The main advantages of the proposed approach can be summarized as follows. Firstly, the proposed model is based on inverted Dirichlet mixture models, which have demonstrated better performance in modeling positive data (e.g., images) than Gaussian mixture models. Secondly, we integrate spatial relationships between pixels with the inverted Dirichlet mixture model, which makes it more robust against noise and image contrast levels. Finally, we develop a variational Bayes method to learn the proposed model, such that the model parameters and model complexity (i.e., the number of mixture components) can be estimated simultaneously in a unified framework. The performance of the proposed approach in medical image segmentation is compared with some state-of-the-art segmentation approaches through various numerical experiments on both simulated and real medical images.
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页码:619 / 639
页数:20
相关论文
共 109 条
[1]  
Ahmed MN(2002)A modified fuzzy c-means algorithm for bias field estimation and segmentation of MRI data IEEE Trans Med Imaging 21 193-199
[2]  
Yamany SM(2008)A finite mixture model for image segmentation Stat Comput 18 137-150
[3]  
Mohamed N(2005)Unified segmentation NeuroImage 26 839-851
[4]  
Farag AA(2012)Positive vectors clustering using inverted Dirichlet finite mixture models Expert Syst Appl 39 1869-1882
[5]  
Moriarty T(2013)Bayesian learning of inverted Dirichlet mixtures for SVM kernels generation Neural Comput Appl 23 1443-1458
[6]  
Alfò M(2005)Variational inference for Dirichlet process mixtures Bayesian Anal 1 121-144
[7]  
Nieddu L(2005)A spatially constrained mixture model for image segmentation IEEE Trans Neural Netw 16 494-498
[8]  
Vicari D(2003)EM procedures using mean field-like approximations for Markov model-based image segmentation Pattern Recogn 36 131-144
[9]  
Ashburner J(2008)A fuzzy clustering approach toward hidden Markov random field models for enhanced spatially constrained image segmentation IEEE Trans Fuzzy Syst 16 1351-1361
[10]  
Friston KJ(1991)Partial volume tissue classification of multichannel magnetic resonance images—a mixel model IEEE Trans Med Imaging 10 395-407