Edge detection in MRI brain tumor images based on fuzzy C-means clustering

Nowadays, medical image processing is the most challenging and emerging field. Edge detection of MRI images is one of the most important stage in this field. The paper describes the proposed strategy to detect the edges of brain tumor from patient’s MRI scan images of the brain. At the first stage,...

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Bibliographic Details
Published inProcedia computer science Vol. 126; pp. 1261 - 1270
Main Authors Zotin, Alexander, Simonov, Konstantin, Kurako, Mikhail, Hamad, Yousif, Kirillova, Svetlana
Format Journal Article
LanguageEnglish
Published Elsevier B.V 2018
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Summary:Nowadays, medical image processing is the most challenging and emerging field. Edge detection of MRI images is one of the most important stage in this field. The paper describes the proposed strategy to detect the edges of brain tumor from patient’s MRI scan images of the brain. At the first stage, this method includes some noise removal functions improving features that provides better characteristics of medical images for reliable diagnosis using Balance Contrast Enhancement Technique (BCET). The result of second stage is subjected to image segmentation using Fuzzy c-Means (FCM) clustering method. Finally, Canny edge detection method is applied to detect the fine edges. During the experimental study, we used images containing brain tumors that were characterized by different location, type of pathology, shape, size and density, as well as the size of the area of the affected tissue near the tumor space. Detection and extraction of tumor from MRI scan images of the brain is done using MATLAB software. The obtained results demonstrate some resistivity to a noise. Also, the accuracy of segmentation, in some cases of tumor pathology, was increased up to 10-15% regarding the expert estimates.
ISSN:1877-0509
1877-0509
DOI:10.1016/j.procs.2018.08.069