An unsupervised method is introduced for retinal blood vessels segmentation. The direction map is built by assigning to each pixel a discrete direction out of twelve possible ones. Under- and over-segmented images are obtained by applying two different threshold values to the direction map. Almost all foreground pixels in the under-segmented image can be taken as vessel pixels. Missing vessel pixels in the under-segmented image are recovered by using the over-segmented image. The method has been tested on the DRIVE dataset producing satisfactory results, and its performance has been compared to that of other unsupervised methods.

Direction-based segmentation of retinal blood vessels

Frucci M;Riccio D;Sanniti di Baja G;Serino L
2017

Abstract

An unsupervised method is introduced for retinal blood vessels segmentation. The direction map is built by assigning to each pixel a discrete direction out of twelve possible ones. Under- and over-segmented images are obtained by applying two different threshold values to the direction map. Almost all foreground pixels in the under-segmented image can be taken as vessel pixels. Missing vessel pixels in the under-segmented image are recovered by using the over-segmented image. The method has been tested on the DRIVE dataset producing satisfactory results, and its performance has been compared to that of other unsupervised methods.
2017
Istituto di Calcolo e Reti ad Alte Prestazioni - ICAR
978-3-319-52276-0
retinal image
blood vessel segmentation
direction map
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/321108
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