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A Cooperative Method to Improve Segmentation of Brain MR Images

Year 2014, Volume: 2 Issue: 2, 134 - 140, 01.08.2014

Abstract

In this paper, we present a fully unsupervised segmentation process of magnetic resonance image (MRI) of the brain using a data fusion technique and some of ideas of the possibility theory context. The fusion methodology is decomposed into three fundamental phases. We modeling information coming from T2 and PD weighted images in a common framework, in this step an hybridization between FCM and PCM algorithms is retained. In the second phase an operator of fusion is used to combine then this information. Finally, an image of fusion is generated when a decision rule is applied. Some results are presented and discussed using a set of simulated MR image

References

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  • C. Lamiche, and A. Moussaoui, “Improvement of brain tissue segmentation using information fusion approach,” Int. Jou. of Advan. Comp. Sci. and Applications, vol. 2, 2011, pp.84–90.
  • L. R. Dice, “Measures of the Amount of Ecologic Association Between Species,” Ecology, vol. 26, 1945, pp.297–302.

A cooperative method to improve segmentation of brain MR

Year 2014, Volume: 2 Issue: 2, 134 - 140, 01.08.2014

Abstract

References

  • Y. Hata, S. Kobashi, and S. Hirano, “Automated segmentation of human brain mr images aided by fuzzy information granulation and fuzzy inference,” IEEE Trans. SMC, vol. 30, 1998, pp. 381–395.
  • D. Goldberg-Zimring, A. Achiron, and S. Miron, “Automated detection and characterization of multiple sclerosis lesions in brain mr images,” Magnetic Resonance Imaging, vol. 16, 1998, pp.311–318.
  • K. Van Leemput, F. Maes, D. Vandermeulen, and P. Suetens, “Automated model-based tissue classification of mr images of the brain,” IEEE Trans. Medical Imaging, vol. 18, 1999, pp.897–908.
  • Y. Wang, T. Adali, J. Xuan, and Z. Szabo, “Magnetic resonance image analysis by information theoretic criteria and stochastic models,” IEEE Trans, Infor. Tech. in Biom., vol. 5, 2001, pp.150–158.
  • I. Bloch, and H. Maitre, “data fusion in 2D and 3D image processing: an overview,” In Proceedings of the X Brazilian symposium on computer graphics and image processing, Brazil, 1997, pp.127–134.
  • C. Bezdek, J. Keller, R. Krishnapuram, and N. R. Pal Fuzzy Models and Algorithms for Pattern Recognition and Image Processing, Kluwer Academic, TA 1650, F89. 1999.
  • D. Dubois, and H. Prade, Fuzzy Sets and Systems: Theory and Application, New-York: Academic Press, 1980.
  • I. Bloch, “Information combination operators for data fusion: a comparative review with classification”, IEEE Transactions en systems, Man. and Cybernitics, vol. 1, 1996, pp.52–67.
  • J. Z. Hongwei, and O. Basir, “Adaptive Fuzzy Evidential Reasoning for Automated Brain Tissue Segmentation,” In Proceedings of the 7th International Conference of Information Fusion. Stockholm, Sweden, 2004.
  • C. Lamiche, and A. Moussaoui, “Improvement of brain tissue segmentation using information fusion approach,” Int. Jou. of Advan. Comp. Sci. and Applications, vol. 2, 2011, pp.84–90.
  • L. R. Dice, “Measures of the Amount of Ecologic Association Between Species,” Ecology, vol. 26, 1945, pp.297–302.
There are 11 citations in total.

Details

Journal Section Articles
Authors

Lamiche Chaabane This is me

Publication Date August 1, 2014
Published in Issue Year 2014 Volume: 2 Issue: 2

Cite

APA Chaabane, L. (2014). A Cooperative Method to Improve Segmentation of Brain MR Images. New Trends in Mathematical Sciences, 2(2), 134-140.
AMA Chaabane L. A Cooperative Method to Improve Segmentation of Brain MR Images. New Trends in Mathematical Sciences. August 2014;2(2):134-140.
Chicago Chaabane, Lamiche. “A Cooperative Method to Improve Segmentation of Brain MR Images”. New Trends in Mathematical Sciences 2, no. 2 (August 2014): 134-40.
EndNote Chaabane L (August 1, 2014) A Cooperative Method to Improve Segmentation of Brain MR Images. New Trends in Mathematical Sciences 2 2 134–140.
IEEE L. Chaabane, “A Cooperative Method to Improve Segmentation of Brain MR Images”, New Trends in Mathematical Sciences, vol. 2, no. 2, pp. 134–140, 2014.
ISNAD Chaabane, Lamiche. “A Cooperative Method to Improve Segmentation of Brain MR Images”. New Trends in Mathematical Sciences 2/2 (August 2014), 134-140.
JAMA Chaabane L. A Cooperative Method to Improve Segmentation of Brain MR Images. New Trends in Mathematical Sciences. 2014;2:134–140.
MLA Chaabane, Lamiche. “A Cooperative Method to Improve Segmentation of Brain MR Images”. New Trends in Mathematical Sciences, vol. 2, no. 2, 2014, pp. 134-40.
Vancouver Chaabane L. A Cooperative Method to Improve Segmentation of Brain MR Images. New Trends in Mathematical Sciences. 2014;2(2):134-40.