Retinal Blood Vessel Extraction from Fundus Images Using Enhancement Filtering and Clustering

Authors

  • Priyadarsan Parida GIET University
  • Jyotiprava Dash Veer Surendra Sai University of Technology
  • Nilamani Bhoi

Abstract

Screening of vision troubling eye diseases by segmenting fundus images eases the danger of loss of sight of people. Computer assisted analysis can play an important role in the forthcoming health care system universally. Therefore, this paper presents a clustering based method for extraction of retinal vasculature from ophthalmoscope images. The method starts with image enhancement by contrast limited adaptive histogram equalization (CLAHE) from which feature extraction is accomplished using Gabor filter followed by enhancement of extracted features with Hessian based enhancement filters. It then extracts the vessels using K-mean clustering technique. Finally, the method ends with the application of a morphological cleaning operation to get the ultimate vessel segmented image. The performance of the proposed method is evaluated by taking two different publicly available Digital retinal images for vessel extraction (DRIVE) and Child heart and health study in England (CHASE_DB1) databases using nine different performance matrices. It gives average accuracies of 0.952 and 0.951 for DRIVE and CHASE_DB1 databases, respectively.     

Keywords

Fundus images, retinal vasculature, morphological cleaning, K-mean clustering,

Author Biographies

Priyadarsan Parida, GIET University

Associate Professor 

Department of Electronics and Communication Engineering 

Jyotiprava Dash, Veer Surendra Sai University of Technology

Department of Electronics and Telecommunication

Published

2020-07-21

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