Title of article :
Improvement of MRI Brain Image Segmentation Using Fuzzy Unsupervised Learning
Author/Authors :
Saneipour, Keyvan Department of Electrical Engineering - Islamic Azad University - Gonabad Branch, Gonabad , Mohammadpoor, Mojtaba Department of Electrical and Computer Engineering - University of Gonabad, Gonabad
Abstract :
Background: Magnetic resonance imaging (MRI) plays an important role in clinical diagnosis. The ability of fuzzy c-mean (FCM)
algorithm in segmentingMRimages has been proven. SomeMRimages are contaminated with noise. FCMperformance is degraded
in noisy images. Several efforts are done to overcome this weakness.
Objectives: The aim of this study was to propose a new method for MR image segmentation which is more resistant than other
methods when noisy MR images are confronted.
Materials and Methods: In this study, simulated brain database prepared by BrainWeb was be used for analysis. First FCM and its
improvements were analysed and their ability in segmenting noisyMRimages were evaluated. Next, knowing that applying genetic
algorithm on improver fuzzy c-mean (IFCM) could improve its performance, anewsegmentation method was proposed by applying
particle swarm optimization on IFCM.
Results: The proposed algorithm was applied on some intentionally noise-added MR images. Similarity between the segmented
image and the original one was measured using Dice index. Other off-the-shelf algorithms were also tested in the same conditions.
The indices were presented together. In order to compare the algorithms’ performances, the experiments were repeated using
different noisy images.
Conclusion: The obtained results show that the proposed algorithms have better performance in segmenting noisy MR images
than existing methods.
Keywords :
MRI Images , Segmentation , Fuzzy
Journal title :
Iranian Journal of Radiology (IJR)