Vessel Extraction in Retinal Images using Automatic Thresholding and Gabor Wavelet

Aziah Ali1, Aini Hussain1, Wan Mimi Diyana Wan Zaki1

  • 1Universiti Kebangsaan Malaysia

Details

14:50 - 15:05 | Wed 12 Jul | Rushmer Room | WeBT16.3

Session: Retinal Imaging I

Abstract

Retinal image analysis has been widely used for early detection and diagnosis of multiple systemic diseases. Accurate vessel extraction in retinal image is a crucial step towards a fully automated diagnosis system. This work affords an efficient unsupervised method for extracting blood vessels from retinal images using Gabor Wavelet (GW) with automatic thresholding. Green channel image is extracted from color retinal image and used to produce Gabor feature image using GW. Both green channel image and Gabor feature image undergo vessel-enhancement step in order to highlight blood vessels. Next, the two vessel-enhanced images are transformed to binary images using automatic thresholding before combined to produce the final vessel output. Combining the images results in significant improvement of blood vessel extraction performance compared to using individual image. Effectiveness of the proposed method was proven via comparative analysis with existing methods validated using publicly available database, DRIVE.