Title: Segmentation and detection of the retinal vascular network using fast filtering
Authors: Nabila Rahmoune; Adel Rahmoune
Addresses: Faculty of Science, Department of Computer Science, Limose Laboratory, University M'hamed Bougara – Boumerdes, Boumerdes, 35000, Algeria ' Faculty of Science, Department of Computer Science, Limose Laboratory, University M'hamed Bougara – Boumerdes, Boumerdes, 35000, Algeria
Abstract: Changes in retinal blood vessels are a characteristic sign of many retinal diseases. Therefore, the automatic segmentation of vessels is an essential element for the diagnosis of different ocular diseases. In this paper, we present a novel algorithm for the detection and the segmentation of the vascular network of blood vessels in fundus images. Our algorithm employs two mean linear filters using the convolutional kernel, one directional along a line and the second on a square region, in combination with thresholding. The proposed approach's performance was tested on the public datasets DRIVE and STARE. Based on the test results, the mean segmentation accuracy, sensitivity, specificity and time complexity of retinal images in DRIVE are 94.27%, 97.01%, 66.20% and 1.63 s and for the STARE database, they are 93.41%, 95.54%, 66.55% and 2.13 s respectively. The proposed algorithm is simple and very fast. It achieved satisfactory mean segmentation accuracy with very low time complexity.
Keywords: retinal blood vessel; image segmentation; mean linear filter; retinopathy; directional filtering; thresholding.
DOI: 10.1504/IJSISE.2023.133655
International Journal of Signal and Imaging Systems Engineering, 2023 Vol.12 No.4, pp.137 - 147
Accepted: 10 Mar 2022
Published online: 28 Sep 2023 *