Segment the Medical Images based on Contourlet Transformations

In this paper, we have studied the Normalized Cut algorithm to segment the medical images that was widely used in the last decade. And we based on Image in contourlet domain that supports rich information in Low _ Low frequency. And a clear edges in High_ High frequency.             As motion above,...

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Main Authors: Khalil Al-Saif, Karam Abdullah
Format: Article
Language:Arabic
Published: Mosul University 2011-12-01
Series:Al-Rafidain Journal of Computer Sciences and Mathematics
Subjects:
Online Access:https://csmj.mosuljournals.com/article_163649_dad693e55e4e903ff2f9e7f1da54bbe9.pdf
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author Khalil Al-Saif
Karam Abdullah
author_facet Khalil Al-Saif
Karam Abdullah
author_sort Khalil Al-Saif
collection DOAJ
description In this paper, we have studied the Normalized Cut algorithm to segment the medical images that was widely used in the last decade. And we based on Image in contourlet domain that supports rich information in Low _ Low frequency. And a clear edges in High_ High frequency.             As motion above, we can replace the algorithm filters by the high frequency contourlet coefficient, and then the edges will be projected on the original image to obtain a segment to be studied independently.             When the proposed algorithm applied on the medical images after exchanging the previous filter by the contourlet coefficients, Adopted in additionto extract the properties of the selected segment to be recognized by human eyes.       <strong><em>    </em></strong>
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spelling doaj.art-4fa7243d8909449f90b588a04fced72f2022-12-22T03:13:57ZaraMosul UniversityAl-Rafidain Journal of Computer Sciences and Mathematics1815-48162311-79902011-12-0182233410.33899/csmj.2011.163649163649Segment the Medical Images based on Contourlet TransformationsKhalil Al-Saif0Karam Abdullah1College of Computer Science and Mathematics University of Mosul, Mosul, IraqCollege of Computer Science and Mathematics University of Mosul, Mosul, IraqIn this paper, we have studied the Normalized Cut algorithm to segment the medical images that was widely used in the last decade. And we based on Image in contourlet domain that supports rich information in Low _ Low frequency. And a clear edges in High_ High frequency.             As motion above, we can replace the algorithm filters by the high frequency contourlet coefficient, and then the edges will be projected on the original image to obtain a segment to be studied independently.             When the proposed algorithm applied on the medical images after exchanging the previous filter by the contourlet coefficients, Adopted in additionto extract the properties of the selected segment to be recognized by human eyes.       <strong><em>    </em></strong>https://csmj.mosuljournals.com/article_163649_dad693e55e4e903ff2f9e7f1da54bbe9.pdfnormalized cut algorithmcontourlet domain
spellingShingle Khalil Al-Saif
Karam Abdullah
Segment the Medical Images based on Contourlet Transformations
Al-Rafidain Journal of Computer Sciences and Mathematics
normalized cut algorithm
contourlet domain
title Segment the Medical Images based on Contourlet Transformations
title_full Segment the Medical Images based on Contourlet Transformations
title_fullStr Segment the Medical Images based on Contourlet Transformations
title_full_unstemmed Segment the Medical Images based on Contourlet Transformations
title_short Segment the Medical Images based on Contourlet Transformations
title_sort segment the medical images based on contourlet transformations
topic normalized cut algorithm
contourlet domain
url https://csmj.mosuljournals.com/article_163649_dad693e55e4e903ff2f9e7f1da54bbe9.pdf
work_keys_str_mv AT khalilalsaif segmentthemedicalimagesbasedoncontourlettransformations
AT karamabdullah segmentthemedicalimagesbasedoncontourlettransformations