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Brain Tumour Detection In MRI Images Using Matlab


A. V. Prabu, Anjali Bharti, Nikita Guru, Sucharita Tripathy
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Now a days Medical image processing is the most challenging and emerging field.The image processing is an important aspect of medical science to visualize the different anatomical structure of human body.Magnetic Resonance Imaging(MRI) is one of the significant techniques for examining human body.This paper describe how to detect and extraction of brain tumour from patient’s MRI scan images of the brain. Here by using MATLAB software and using the basic concept of image processing, detection and extraction of tumour from MRI scan images of the brain is done.

A. V. Prabu, Anjali Bharti, Nikita Guru, Sucharita Tripathy

Tumor, Brain, Clustering, MRI image(magnetic image resoning), identifying tumor,Segmentation,GUI (graphical user interface)

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Publication Details

Published in : Volume 2 | Issue 2 | March-April - 2016
Date of Publication Print ISSN Online ISSN
2016-05-05 2395-1990 2394-4099
Page(s) Manuscript Number   Publisher
1230-1233 IJSRSET1622353   Technoscience Academy

Cite This Article

A. V. Prabu, Anjali Bharti, Nikita Guru, Sucharita Tripathy, "Brain Tumour Detection In MRI Images Using Matlab ", International Journal of Scientific Research in Science, Engineering and Technology(IJSRSET), Print ISSN : 2395-1990, Online ISSN : 2394-4099, Volume 2, Issue 2, pp.1230-1233, March-April-2016.
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