Title :
Spatial spectral Gaussian mixture model approach for automatic segmentation of multispectral MR brain images
Author :
Chegini, M. ; Ghassemian, Hassan
Author_Institution :
Fac. of Electr. & Comput. Eng., Tarbiat Modares Univ., Tehran, Iran
Abstract :
The Gaussian Mixture Model (GMM) is one of the most widely used models for statistical segmentation of brain Magnetic Resonance (MR) images. Because the GMM is a histogram-based model, has an intrinsic limitation which spatial information is not included. This problem causes the GMM to make good results only on images with low levels of noise and high level of contrast. In this paper, an automated algorithm for tissue segmentation multispectral magnetic resonance (MR) images of the brain is presented. We introduce a spatial spectral GMM which augment histogram information with spatial data using adaptive Markov random fields and real prior information which is generated form a spectral clustering. We have called this approach “Spatial Spectral Segmentation” (SSS). The Expectation-Maximization (EM) algorithm is utilized to learn the parameter-tied, spatial spectral Gaussian mixture model. Segmentation of the brain image is achieved by the affiliation of each pixel to the component of the model that maximized the a posteriori probability. Also we propose a complete preprocessing to obtain a comprehensive segmentation approach. The presented algorithm is used to segment Multispectral included T1, T2 and PD simulated and real MR images of the brain into three different tissues (WM, GM and CSF) The performance of the SSS based method is compared with that of popular EM segmentation. The experimental results show that the proposed method is robust.
Keywords :
Gaussian processes; Markov processes; biological tissues; biomedical MRI; brain; data analysis; expectation-maximisation algorithm; image segmentation; medical image processing; probability; adaptive Markov random fields; augment histogram information; automated algorithm; automatic segmentation; brain magnetic resonance images; expectation-maximization algorithm; multispectral MR brain images; posteriori probability; spatial data; spatial spectral GMM; spatial spectral gaussian mixture model approach; spatial spectral segmentation; spectral clustering; statistical segmentation; tissue segmentation multispectral magnetic resonance images; tissues; Expectation-Maximization; Gaussian Mixture Model; MRI brain segmentation; spectral clustering;
Conference_Titel :
Electrical Engineering (ICEE), 2011 19th Iranian Conference on
Conference_Location :
Tehran
Print_ISBN :
978-1-4577-0730-8