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Mind Growth Recognition Utilizing k-implies grouping and Fluffy C-implies Calculation

Md. Fakrul Hasan

Abstract


Image Processing for Medical Science is an emerging research field in which several techniques have been proposed in detection and analysis of a particular disease. Treatment of brain tumors in recent years is getting more and more challenging due to the complex structure, shape and texture of the tumor. Therefore, by advancing in image processing, various methodologies have been proposed to identify the tumors in the brain. The advancement in this field created an urge to research more on the techniques and methodologies developed for tumor extraction. Hence, we propose a scheme to extract tumor from the brain using MRI images. This technique involves different image processing methodologies such as noise removal, filtering, segmentation and morphological operations. Extraction of brain tumor has been accomplished successfully by performing these operations in MATLAB.


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References


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