A generative adversarial network based super-resolution approach for capsule endoscopy images

Medical wireless capsule endoscopy is an effective method for diagnosis and evaluation of gastrointestinal diseases. However, due to energy and size limitations, it produces low-resolution images, which makes it difficult to detect and diagnose the abnormality and may even lead to an incorrect diagn...

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Main Author: Mehmet Turan
Format: Article
Language:English
Published: Society of TURAZ AKADEMI 2021-09-01
Series:Medicine Science
Subjects:
Online Access:http://www.ejmanager.com/fulltextpdf.php?mno=90711
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spelling doaj-aed0557f06d94b85a99a12f8395c600b2021-09-26T14:34:43ZengSociety of TURAZ AKADEMI Medicine Science2147-06342021-09-011031002710.5455/medscience.2021.06.21890711A generative adversarial network based super-resolution approach for capsule endoscopy imagesMehmet Turan0Assistant Professor, Biomedical Engineering Institute, Bogazici UniversityMedical wireless capsule endoscopy is an effective method for diagnosis and evaluation of gastrointestinal diseases. However, due to energy and size limitations, it produces low-resolution images, which makes it difficult to detect and diagnose the abnormality and may even lead to an incorrect diagnosis. Recently, endoscopy methods with improved resolution have been shown to be more effective than conventional endoscopy approaches in disease detection and characterization, and it is expected that they will have the same success in the field of capsule endoscopy. In this study, a novel method based on deep learning techniques is proposed that can generate high-resolution counterparts of low-resolution endoscopic images. Conditional GANs and spatial attention blocks are combined to increase the resolution by 8x, 10x and 12x. Extensive qualitative and quantitative analyses show that the proposed method is more successful than the recent deep super-resolution technologies, such as Deep Back Projection Network (DBPN) and Residual Channel Attention Networks (RCAN). [Med-Science 2021; 10(3.000): 1002-7]http://www.ejmanager.com/fulltextpdf.php?mno=90711capsule endoscopydeep super resolutionspatial attention blocksgenerative adversarial networks
collection DOAJ
language English
format Article
sources DOAJ
author Mehmet Turan
spellingShingle Mehmet Turan
A generative adversarial network based super-resolution approach for capsule endoscopy images
Medicine Science
capsule endoscopy
deep super resolution
spatial attention blocks
generative adversarial networks
author_facet Mehmet Turan
author_sort Mehmet Turan
title A generative adversarial network based super-resolution approach for capsule endoscopy images
title_short A generative adversarial network based super-resolution approach for capsule endoscopy images
title_full A generative adversarial network based super-resolution approach for capsule endoscopy images
title_fullStr A generative adversarial network based super-resolution approach for capsule endoscopy images
title_full_unstemmed A generative adversarial network based super-resolution approach for capsule endoscopy images
title_sort generative adversarial network based super-resolution approach for capsule endoscopy images
publisher Society of TURAZ AKADEMI
series Medicine Science
issn 2147-0634
publishDate 2021-09-01
description Medical wireless capsule endoscopy is an effective method for diagnosis and evaluation of gastrointestinal diseases. However, due to energy and size limitations, it produces low-resolution images, which makes it difficult to detect and diagnose the abnormality and may even lead to an incorrect diagnosis. Recently, endoscopy methods with improved resolution have been shown to be more effective than conventional endoscopy approaches in disease detection and characterization, and it is expected that they will have the same success in the field of capsule endoscopy. In this study, a novel method based on deep learning techniques is proposed that can generate high-resolution counterparts of low-resolution endoscopic images. Conditional GANs and spatial attention blocks are combined to increase the resolution by 8x, 10x and 12x. Extensive qualitative and quantitative analyses show that the proposed method is more successful than the recent deep super-resolution technologies, such as Deep Back Projection Network (DBPN) and Residual Channel Attention Networks (RCAN). [Med-Science 2021; 10(3.000): 1002-7]
topic capsule endoscopy
deep super resolution
spatial attention blocks
generative adversarial networks
url http://www.ejmanager.com/fulltextpdf.php?mno=90711
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