Performance Analysis of Clustering Based Image Segmentation Techniques

Author:

Manoharan Dr. Samuel

Abstract

As the images are examined using the latest machine learning process, the techniques for computing the images become highly essential. This computation applied over the images allows one to have an assessable information’s or values from the images. Since segmentation plays a vital role in processing of images by enhancing or hypothetically altering the images making the examination of valuable insights easier. Several procedures and the methods for segmenting the images have been developed. However to have an better process it is important to sort out an effective segmentation procedure, so the paper performs the analysis of the clustering based image segmentation techniques applied on the magnetic resonance image of the human brain to detect the white matter hyper intensities part. The evaluation process take place in the MATLAB to evince the accurate valuation procedure. The optimal procedure is sorted out to be used in observing and examining the medical images by implementing over a computer assisted tool.

Publisher

Inventive Research Organization

Reference12 articles.

1. [1] Heena, A., N. Biradar, and N. M. Maroof. "A novel approach to review various image segmentation techniques." Int. J. Innov. Res. Comput. Commun. Eng. ISO Certif. Organ 32975, no. 2 (2007): 266-269.

2. [2] Papadopoulos, Symeon, Christos Zigkolis, Giorgos Tolias, Yannis Kalantidis, Phivos Mylonas, Yiannis Kompatsiaris, and Athena Vakali. "Image clustering through community detection on hybrid image similarity graphs." In 2010 IEEE International Conference on Image Processing, pp. 2353-2356. IEEE, 2010.

3. [3] Brickman, Adam M., Karen L. Siedlecki, Jordan Muraskin, Jennifer J. Manly, José A. Luchsinger, Lok-Kin Yeung, Truman R. Brown, Charles DeCarli, and Yaakov Stern. "White matter hyperintensities and cognition: testing the reserve hypothesis." Neurobiology of aging 32, no. 9 (2011): 1588-1598.

4. [4] Suganya, R., and R. Shanthi. "Fuzzy c-means algorithm-a review." International Journal of Scientific and Research Publications 2, no. 11 (2012): 1.

5. [5] Ajala Funmilola, A., O. A. Oke, T. O. Adedeji, O. M. Alade, and E. A. Adewusi. "Fuzzy kc-means clustering algorithm for medical image segmentation." Journal of Information Engineering and Applications, ISSN 22245782 (2012): 2225-0506.

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