Fully automatic brain extraction algorithm for axial T2-weighted magnetic resonance images |
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Authors: | K. Somasundaram [Author Vitae] T. Kalaiselvi [Author Vitae] |
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Affiliation: | Department of Computer Science and Applications, Gandhigram Rural Institute, Gandhigram, Tamilnadu 624302, India |
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Abstract: | In this paper we propose two brain extraction algorithms (BEA) for T2-weighted magnetic resonance imaging (MRI) scans. The T2-weighted image is first filtered with a low pass filter (LPF) to remove or subdue the background noise. Then the image is diffused to enhance the brain boundaries. Using Ridler’s method a threshold value for intensity is obtained. Using the threshold value a rough binary brain image is obtained. By performing morphological operations and using the largest connected component (LCC) analysis, a brain mask is obtained from which the brain is extracted. This method uses only 2D information of slices and is named as 2D-BEA. The concept of LCC failed in few slices. To overcome this problem, 3D information available in adjacent slices is used which resulted in 3D-BEA. Experimental results on 20 MRI data sets show that the proposed 3D-BEA gave excellent results. The performance of this 3D-BEA is better than 2D-BEA and other popular methods, brain extraction tool (BET) and brain surface extractor (BSE). |
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Keywords: | Brain extraction algorithms Diffusion process Overlap test Morphological operations Region selection Similarity index T2-weighted MRI scans |
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