Forming optimal projection images from intra-retinal layers using curvelet-based image fusion method

Background: Image fusion is the process of combining the information of several input images into one image. Projection images obtained from three-dimensional (3D) optical coherence tomography (OCT) can show inlier retinal pathology and abnormalities that are not visible in conventional fundus image...

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Main Authors: Jalil Jalili, Hossein Rabbani, Alireza Mehri Dehnavi, Raheleh Kafieh, Mohammadreza Akhlaghi
Format: Article
Language:English
Published: Wolters Kluwer Medknow Publications 2020-01-01
Series:Journal of Medical Signals and Sensors
Subjects:
Online Access:http://www.jmssjournal.net/article.asp?issn=2228-7477;year=2020;volume=10;issue=2;spage=76;epage=85;aulast=Jalili
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spelling doaj-ea04bb4fd723439ca9b2312fbac60b1c2020-11-25T02:17:06ZengWolters Kluwer Medknow PublicationsJournal of Medical Signals and Sensors2228-74772020-01-01102768510.4103/jmss.JMSS_43_19Forming optimal projection images from intra-retinal layers using curvelet-based image fusion methodJalil JaliliHossein RabbaniAlireza Mehri DehnaviRaheleh KafiehMohammadreza AkhlaghiBackground: Image fusion is the process of combining the information of several input images into one image. Projection images obtained from three-dimensional (3D) optical coherence tomography (OCT) can show inlier retinal pathology and abnormalities that are not visible in conventional fundus images. In recent years, the projection image is often made by an average on all retina that causes to lose many intraretinal details. Methods: In this study, we focus on the formation of optimum projection images from retinal layers using Curvelet-based image fusion. The latter consists of three main steps. In the earlier studies, macular spectral 3D data using diffusion map-based OCT were segmented into 12 different boundaries identifying 11 retinal layers in three dimensions. In the second step, projection images are attained using conducting some statistical methods on the space between each pair of boundaries. In the next step, retinal layers are merged using Curvelet transform to make the final projection images. Results: These images contain integrated retinal depth information as well as an ideal opportunity to better extract retinal features such as vessels and the macula region. Finally, qualitative and quantitative evaluations show the superiority of this method to the average-based and wavelet-based fusion methods. Overall, our method obtains the best results for image fusion in all terms such as entropy (6.7744) and AG (9.5491). Conclusion: Creating an image with more and detailed information made by the Curvelet-based image fusion has significantly higher contrast. There are also many thin veins in Curvelet-based fused image, which are absent in average-based and wavelet-based fused images.http://www.jmssjournal.net/article.asp?issn=2228-7477;year=2020;volume=10;issue=2;spage=76;epage=85;aulast=Jalilicurvelet transformimage fusionoptical coherence tomographyprojection imageretina
collection DOAJ
language English
format Article
sources DOAJ
author Jalil Jalili
Hossein Rabbani
Alireza Mehri Dehnavi
Raheleh Kafieh
Mohammadreza Akhlaghi
spellingShingle Jalil Jalili
Hossein Rabbani
Alireza Mehri Dehnavi
Raheleh Kafieh
Mohammadreza Akhlaghi
Forming optimal projection images from intra-retinal layers using curvelet-based image fusion method
Journal of Medical Signals and Sensors
curvelet transform
image fusion
optical coherence tomography
projection image
retina
author_facet Jalil Jalili
Hossein Rabbani
Alireza Mehri Dehnavi
Raheleh Kafieh
Mohammadreza Akhlaghi
author_sort Jalil Jalili
title Forming optimal projection images from intra-retinal layers using curvelet-based image fusion method
title_short Forming optimal projection images from intra-retinal layers using curvelet-based image fusion method
title_full Forming optimal projection images from intra-retinal layers using curvelet-based image fusion method
title_fullStr Forming optimal projection images from intra-retinal layers using curvelet-based image fusion method
title_full_unstemmed Forming optimal projection images from intra-retinal layers using curvelet-based image fusion method
title_sort forming optimal projection images from intra-retinal layers using curvelet-based image fusion method
publisher Wolters Kluwer Medknow Publications
series Journal of Medical Signals and Sensors
issn 2228-7477
publishDate 2020-01-01
description Background: Image fusion is the process of combining the information of several input images into one image. Projection images obtained from three-dimensional (3D) optical coherence tomography (OCT) can show inlier retinal pathology and abnormalities that are not visible in conventional fundus images. In recent years, the projection image is often made by an average on all retina that causes to lose many intraretinal details. Methods: In this study, we focus on the formation of optimum projection images from retinal layers using Curvelet-based image fusion. The latter consists of three main steps. In the earlier studies, macular spectral 3D data using diffusion map-based OCT were segmented into 12 different boundaries identifying 11 retinal layers in three dimensions. In the second step, projection images are attained using conducting some statistical methods on the space between each pair of boundaries. In the next step, retinal layers are merged using Curvelet transform to make the final projection images. Results: These images contain integrated retinal depth information as well as an ideal opportunity to better extract retinal features such as vessels and the macula region. Finally, qualitative and quantitative evaluations show the superiority of this method to the average-based and wavelet-based fusion methods. Overall, our method obtains the best results for image fusion in all terms such as entropy (6.7744) and AG (9.5491). Conclusion: Creating an image with more and detailed information made by the Curvelet-based image fusion has significantly higher contrast. There are also many thin veins in Curvelet-based fused image, which are absent in average-based and wavelet-based fused images.
topic curvelet transform
image fusion
optical coherence tomography
projection image
retina
url http://www.jmssjournal.net/article.asp?issn=2228-7477;year=2020;volume=10;issue=2;spage=76;epage=85;aulast=Jalili
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AT hosseinrabbani formingoptimalprojectionimagesfromintraretinallayersusingcurveletbasedimagefusionmethod
AT alirezamehridehnavi formingoptimalprojectionimagesfromintraretinallayersusingcurveletbasedimagefusionmethod
AT rahelehkafieh formingoptimalprojectionimagesfromintraretinallayersusingcurveletbasedimagefusionmethod
AT mohammadrezaakhlaghi formingoptimalprojectionimagesfromintraretinallayersusingcurveletbasedimagefusionmethod
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