Unsupervised multiscale retinal blood vessel segmentation using fundus images

Blood vessel segmentation is a vital step in automated diagnosis of retinal diseases. Some retinal diseases progress with structural changes in the vessels whereas in others, vessels may remain unaffected. Segmentation of vessels is inevitable in both the cases. The extracted vessel map can be studi...

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Main Authors: Kamini Upadhyay, Monika Agrawal, Praveen Vashist
Format: Article
Language:English
Published: Wiley 2020-09-01
Series:IET Image Processing
Subjects:
Online Access:https://doi.org/10.1049/iet-ipr.2019.0969
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spelling doaj-6a0e36b0f92746f5bfc779c34fb17afc2021-07-16T05:10:34ZengWileyIET Image Processing1751-96591751-96672020-09-0114112616262510.1049/iet-ipr.2019.0969Unsupervised multiscale retinal blood vessel segmentation using fundus imagesKamini Upadhyay0Monika Agrawal1Praveen Vashist2Centre for Applied Research in Electronics, IIT DelhiNew DelhiIndiaCentre for Applied Research in Electronics, IIT DelhiNew DelhiIndiaCommunity OphthalmologyDr RP Centre for Ophthalmic Sciences, AIIMSNew DelhiIndiaBlood vessel segmentation is a vital step in automated diagnosis of retinal diseases. Some retinal diseases progress with structural changes in the vessels whereas in others, vessels may remain unaffected. Segmentation of vessels is inevitable in both the cases. The extracted vessel map can be studied for these structural changes or can be removed to highlight other abnormalities of the retina. This study presents a rule‐based retinal blood vessel segmentation algorithm. It implements two multi‐scale approaches, local directional‐wavelet transform and global curvelet transform, together in a novel manner for vessel enhancement and thereby segmentation. The authors have proposed a generic field‐of‐view mask for extraction of region‐of‐interest. Further, a morphological thickness‐correction step, to recover vessel‐boundary pixels, is also proposed. The significant contribution of this work is, segmentation of fine vessels while preserving the thickness of major vessels. Moreover, the algorithm is robust, as it performs consistently well, on four public databases, DRIVE, STARE, CHASE_DB‐1 and HRF. Performance of the proposed algorithm is evaluated in terms of eight measures : accuracy, sensitivity, specificity, precision, F‐1 score, G‐mean, MCC and AUC, where it has outperformed many other existing methods. Zero data dependency gives the suggested algorithm, an edge over other state‐of‐the‐art supervised methods.https://doi.org/10.1049/iet-ipr.2019.0969unsupervised multiscale retinal blood vessel segmentationretinal diseasestructural changesrule‐based retinal blood vessel segmentation algorithmdirectional‐wavelet transformvessel enhancement
collection DOAJ
language English
format Article
sources DOAJ
author Kamini Upadhyay
Monika Agrawal
Praveen Vashist
spellingShingle Kamini Upadhyay
Monika Agrawal
Praveen Vashist
Unsupervised multiscale retinal blood vessel segmentation using fundus images
IET Image Processing
unsupervised multiscale retinal blood vessel segmentation
retinal disease
structural changes
rule‐based retinal blood vessel segmentation algorithm
directional‐wavelet transform
vessel enhancement
author_facet Kamini Upadhyay
Monika Agrawal
Praveen Vashist
author_sort Kamini Upadhyay
title Unsupervised multiscale retinal blood vessel segmentation using fundus images
title_short Unsupervised multiscale retinal blood vessel segmentation using fundus images
title_full Unsupervised multiscale retinal blood vessel segmentation using fundus images
title_fullStr Unsupervised multiscale retinal blood vessel segmentation using fundus images
title_full_unstemmed Unsupervised multiscale retinal blood vessel segmentation using fundus images
title_sort unsupervised multiscale retinal blood vessel segmentation using fundus images
publisher Wiley
series IET Image Processing
issn 1751-9659
1751-9667
publishDate 2020-09-01
description Blood vessel segmentation is a vital step in automated diagnosis of retinal diseases. Some retinal diseases progress with structural changes in the vessels whereas in others, vessels may remain unaffected. Segmentation of vessels is inevitable in both the cases. The extracted vessel map can be studied for these structural changes or can be removed to highlight other abnormalities of the retina. This study presents a rule‐based retinal blood vessel segmentation algorithm. It implements two multi‐scale approaches, local directional‐wavelet transform and global curvelet transform, together in a novel manner for vessel enhancement and thereby segmentation. The authors have proposed a generic field‐of‐view mask for extraction of region‐of‐interest. Further, a morphological thickness‐correction step, to recover vessel‐boundary pixels, is also proposed. The significant contribution of this work is, segmentation of fine vessels while preserving the thickness of major vessels. Moreover, the algorithm is robust, as it performs consistently well, on four public databases, DRIVE, STARE, CHASE_DB‐1 and HRF. Performance of the proposed algorithm is evaluated in terms of eight measures : accuracy, sensitivity, specificity, precision, F‐1 score, G‐mean, MCC and AUC, where it has outperformed many other existing methods. Zero data dependency gives the suggested algorithm, an edge over other state‐of‐the‐art supervised methods.
topic unsupervised multiscale retinal blood vessel segmentation
retinal disease
structural changes
rule‐based retinal blood vessel segmentation algorithm
directional‐wavelet transform
vessel enhancement
url https://doi.org/10.1049/iet-ipr.2019.0969
work_keys_str_mv AT kaminiupadhyay unsupervisedmultiscaleretinalbloodvesselsegmentationusingfundusimages
AT monikaagrawal unsupervisedmultiscaleretinalbloodvesselsegmentationusingfundusimages
AT praveenvashist unsupervisedmultiscaleretinalbloodvesselsegmentationusingfundusimages
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