Open Journal of Medical Imaging

Volume 3, Issue 4 (December 2013)

ISSN Print: 2164-2788   ISSN Online: 2164-2796

Google-based Impact Factor: 0.15  Citations  

An Adaptive Fuzzy C-Means Algorithm for Improving MRI Segmentation

HTML  Download Download as PDF (Size: 1239KB)  PP. 125-135  
DOI: 10.4236/ojmi.2013.34020    5,260 Downloads   9,770 Views  Citations

ABSTRACT

In this paper, we propose new fuzzy c-means method for improving the magnetic resonance imaging (MRI) segmenta- tion. The proposed method called “possiblistic fuzzy c-means (PFCM)” which hybrids the fuzzy c-means (FCM) and possiblistic c-means (PCM) functions. It is realized by modifying the objective function of the conventional PCM algorithm with Gaussian exponent weights to produce memberships and possibilities simultaneously, along with the usual point prototypes or cluster centers for each cluster. The membership values can be interpreted as degrees of possibility of the points belonging to the classes, i.e., the compatibilities of the points with the class prototypes. For that, the proposed algorithm is capable to avoid various problems of existing fuzzy clustering methods that solve the defect of noise sensitivity and overcomes the coincident clusters problem of PCM. The efficiency of the proposed algorithm is demonstrated by extensive segmentation experiments by applying them to the challenging applications: gray matter/white matter segmentation in magnetic resonance image (MRI) datasets and by comparison with other state of the art algorithms. The experimental results show that the proposed method produces accurate and stable results.

Share and Cite:

Allam Zanaty, E. (2013) An Adaptive Fuzzy C-Means Algorithm for Improving MRI Segmentation. Open Journal of Medical Imaging, 3, 125-135. doi: 10.4236/ojmi.2013.34020.

Cited by

[1] Development of a Stand-Alone Independent Graphical User Interface for Neurological Disease Prediction with Automated Extraction and Segmentation of Gray and …
2019
[2] Automatic Seeded Selection Region Growing Algorithm for Effective MRI Brain Image Segmentation and Classification
2019
[3] A Computational Segmentation Tool for Processing Patient Brain MRI Image Data to Automatically Extract Gray and White Matter Regions
2019
[4] Development of a stand-alone independent graphical user interface for neurological disease prediction with automated extraction and segmentation of gray …
2019
[5] Temporal-spatial recognizer for multi-label data
2018
[6] Developement of a Neurological Disease Prediction Framework for Assisting Neurologits to Automatically Segment Gray and White Matter Regions in Brain MRI …
2018
[7] An Effective Computational Tool for Segmentation of Gray and White Matter Regions in Brain MRI Images
2018
[8] Graphical Computational Tool for Segmentation of Gray and White Matter Regions in Brain MRI Images
2018
[9] Brain MR image segmentation based on Gaussian filtering and improved FCM clustering algorithm
2017
[10] Histological Image Segmentation using Fuzzy C-Means
International Journal of Computer Applications, 2016
[11] THE AUTOMATED SEGMENTATION TECHNIQUES OF T2-WEIGHTED MRI IMAGES USING K-MEANS CLUSTERING AND OTSU-BASED THRESHOLDING METHOD
Jurnal Teknologi, 2016
[12] Spatial possibilistic Fuzzy C-Mean segmentation algorithm integrated with brain mid-sagittal surface information
International Journal of Fuzzy Systems, 2016
[13] Fuzzy C-means Clustering with Temporal-based Membership Function
2016
[14] Hybrid Fuzzy Clustering Technique using Random based Optimization for Segmenting MRI Brain Images
2015
[15] An improved Chebyshev distance metric for clustering medical images
INNOVATION AND ANALYTICS CONFERENCE AND EXHIBITION (IACE 2015): Proceedings of the 2nd Innovation and Analytics Conference & Exhibition, 2015
[16] Automatic Breast Cancer Classification Using Novel Feature Extraction for Magnetic Resonance Imaging and Image Processing
2013
[17] Automatic Breast Cancer Classification Using Novel Feature Extraction for Magnetic Resonance Imaging and Image Processing Technique
2013

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.