Abstract

A hybrid segmentation algorithm is proposed is this paper to extract the blood vessels from the fundus image of retina. Fundus camera captures the posterior surface of the eye and the captured images are used to diagnose diseases, like Diabetic Retinopathy, Retinoblastoma, Retinal haemorrhage, etc. Segmentation or extraction of blood vessels is highly required, since the analysis of vessels is crucial for diagnosis, treatment planning, and execution of clinical outcomes in the field of ophthalmology. It is derived from the literature review that no unique segmentation algorithm is suitable for images of different eye-related diseases and the degradation of the vessels differ from patient to patient. If the blood vessels are extracted from the fundus images, it will make the diagnosis process easier. Hence, this paper aims to frame a hybrid segmentation algorithm exclusively for the extraction of blood vessels from the fundus image. The proposed algorithm is hybridized with morphological operations, bottom hat transform, multi-scale vessel enhancement (MSVE) algorithm, and image fusion. After execution of the proposed segmentation algorithm, the area-based morphological operator is applied to highlight the blood vessels. To validate the proposed algorithm, the results are compared with the ground truth of the High-Resolution Fundus (HRF) images dataset. Upon comparison, it is inferred that the proposed algorithm segments the blood vessels with more accuracy than the existing algorithms.

Highlights

  • Cataract, uncorrected refractive error, Glaucoma, Age-related macular degeneration, DiabeticRetinopathy, corneal opacity, trachoma, and others are responsible for vision impairment

  • The proposed method has been tested on High-Resolution Fundus (HRF), DRIVE, and CHASE databases, which provide ground truth data

  • A hybrid segmentation approach with a novel mask generation scheme is proposed to extract the retinal vasculature from the fundus images of eye

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Summary

Introduction

Cataract, uncorrected refractive error, Glaucoma, Age-related macular degeneration, Diabetic. Retinopathy, corneal opacity, trachoma, and others are responsible for vision impairment. Among the listed medical conditions, uncorrected refractive error, cataract, and glaucoma are the major cause of blindness. Statistics from the World Health Organization (WHO) states that 81% of the people who are blind are above 50 years of age. It is estimated that the number of people who are blind will increase from 38.5 million in 2020 to 115 million in 2050 [1]. Diabetic retinopathy is a major cause evolving for blindness. WHO report on diabetes states that diabetes will be the seventh major cause of death in

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