VBI-MRF model for image segmentation

被引:0
作者
Yong Xia
Zhe Li
机构
[1] Northwestern Polytechnical University,Shaanxi Key Lab of Speech & Image Information Processing (SAIIP), School of Computer Science and Engineering
[2] Northwestern Polytechnical University,Centre for Multidisciplinary Convergence Computing (CMCC), School of Computer Science and Engineering
来源
Multimedia Tools and Applications | 2018年 / 77卷
关键词
Image segmentation; Variational Bayes inference; Markov random field (MRF); Variational expectation-maximization (VEM);
D O I
暂无
中图分类号
学科分类号
摘要
In statistical image segmentation, the distribution of pixel values is usually assumed to be Gaussian and the optimal result is believed to be the one that has maximum a posteriori (MAP) probability. In spite of its prevalence and computational efficiency, the Gaussian assumption, however, is not always strictly followed, and hence may lead to less accurate results. Although the variational Bayes inference (VBI), in which statistical model parameters are also assumed to be random variables, has been widely used, it can hardly handle the spatial information embedded in pixels. In this paper, we incorporate spatial smoothness constraints on pixels labels interpreted by the Markov random field (MRF) model into the VBI process, and thus propose a novel statistical model called VBI-MRF for image segmentation. We evaluated our algorithm against the variational expectation-maximization (VEM) algorithm and the hidden Markov random field (HMRF) model and MAP-MRF model based algorithms on both noise-corrupted synthetic images and mosaics of natural texture. Our pilot results suggest that the proposed algorithm can segment images more accurately than other three methods and is capable of producing robust image segmentation.
引用
收藏
页码:13343 / 13361
页数:18
相关论文
共 135 条
[1]  
Banerjee A(2015)Rough sets and stomped normal distribution for simultaneous segmentation and bias field correction in brain mr images IEEE Trans Image Process 24 5764-5776
[2]  
Maji P(2010)Image segmentation by map-ml estimations IEEE Trans Image Process Publ IEEE Signal Process Soc 19 2254-2264
[3]  
Chen S(2000)The em/mpm algorithm for segmentation of textured images: analysis and further experimental results IEEE Trans Image Process 9 1731-1744
[4]  
Cao L(1977)Maximum likelihood from incomplete data via Em algorithm J R Stat Soc Ser B-Methodol 39 1-38
[5]  
Wang Y(2004)Unsupervised image segmentation using a simple mrf model with a new implementation scheme Pattern Recogn 37 2323-2335
[6]  
Liu J(2014)Rotation-covariant texture learning using steerable riesz wavelets IEEE Trans Image Process Publ IEEE Signal Process Soc 23 898-908
[7]  
Tang X(2012)Adaptive markov random fields for joint unmixing and segmentation of hyperspectral images IEEE Trans Image Process 22 5-16
[8]  
Comer ML(2005)A unified framework for map estimation in remote sensing image segmentation IEEE Trans Geosci Remote Sens 43 1617-1634
[9]  
Delp EJ(2002)Unsupervised learning of finite mixture models IEEE Trans Pattern Anal Mach Intell 24 381-396
[10]  
Dempster AP(1989)Gabor filters as texture discriminator Biol Cybern 61 103-113