Edge Detection of Cavity for Identification Tuberculosis Patient in Thorax X-Ray Image

Thorax x-ray images are used to identify tuberculous cavities. Sometimes it is difficult to detect the cavity and determine its extent in unprocessed digital image. Image processing serves to help the identification. The method used in this study is Morphological Segmentation and Unsharp Masking. Th...

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Main Authors: Julius Santony, Johan Harlan, Syafrika Deni Rizki, Yuhandri, Jufriadif Na`am
Format: Article
Language:English
Published: UIKTEN 2020-02-01
Series:TEM Journal
Subjects:
Online Access:http://www.temjournal.com/content/91/TEMJournalFebruary2020_67_72.pdf
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spelling doaj-a5f9e9ff62014701b1ca9d1f61c98f8a2020-11-25T01:45:46ZengUIKTENTEM Journal2217-83092217-83332020-02-0191677210.18421/TEM91-10Edge Detection of Cavity for Identification Tuberculosis Patient in Thorax X-Ray ImageJulius SantonyJohan HarlanSyafrika Deni RizkiYuhandriJufriadif Na`amThorax x-ray images are used to identify tuberculous cavities. Sometimes it is difficult to detect the cavity and determine its extent in unprocessed digital image. Image processing serves to help the identification. The method used in this study is Morphological Segmentation and Unsharp Masking. The total number of images which were to be processed was 42 , yet only one of them is completely presented and discussed in this article. In all of the post processed images, it can identify tuberculosis cavity and measure its area.http://www.temjournal.com/content/91/TEMJournalFebruary2020_67_72.pdfedge detectionmedical imagesegmentationx-ray imagetuberculous cavity
collection DOAJ
language English
format Article
sources DOAJ
author Julius Santony
Johan Harlan
Syafrika Deni Rizki
Yuhandri
Jufriadif Na`am
spellingShingle Julius Santony
Johan Harlan
Syafrika Deni Rizki
Yuhandri
Jufriadif Na`am
Edge Detection of Cavity for Identification Tuberculosis Patient in Thorax X-Ray Image
TEM Journal
edge detection
medical image
segmentation
x-ray image
tuberculous cavity
author_facet Julius Santony
Johan Harlan
Syafrika Deni Rizki
Yuhandri
Jufriadif Na`am
author_sort Julius Santony
title Edge Detection of Cavity for Identification Tuberculosis Patient in Thorax X-Ray Image
title_short Edge Detection of Cavity for Identification Tuberculosis Patient in Thorax X-Ray Image
title_full Edge Detection of Cavity for Identification Tuberculosis Patient in Thorax X-Ray Image
title_fullStr Edge Detection of Cavity for Identification Tuberculosis Patient in Thorax X-Ray Image
title_full_unstemmed Edge Detection of Cavity for Identification Tuberculosis Patient in Thorax X-Ray Image
title_sort edge detection of cavity for identification tuberculosis patient in thorax x-ray image
publisher UIKTEN
series TEM Journal
issn 2217-8309
2217-8333
publishDate 2020-02-01
description Thorax x-ray images are used to identify tuberculous cavities. Sometimes it is difficult to detect the cavity and determine its extent in unprocessed digital image. Image processing serves to help the identification. The method used in this study is Morphological Segmentation and Unsharp Masking. The total number of images which were to be processed was 42 , yet only one of them is completely presented and discussed in this article. In all of the post processed images, it can identify tuberculosis cavity and measure its area.
topic edge detection
medical image
segmentation
x-ray image
tuberculous cavity
url http://www.temjournal.com/content/91/TEMJournalFebruary2020_67_72.pdf
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