Detalhes do Documento

Low-Resolution Retinal Image Vessel Segmentation

Autor(es): Zengin, Hasan ; Camara, José ; Coelho, Paulo ; Rodrigues, João M. F. ; Cunha, António

Data: 2020

Identificador Persistente: http://hdl.handle.net/10400.8/14256

Origem: IC-online

Assunto(s): Faster R-CNN; U-Net; Low-resolution retinal images; Segmentation; Screening


Descrição

Segmentation process serves to aid the pathology diagnosing process since segmentation filters the interference from other anatomical structures and helps focus on the posterior segment structures of the eye, highlighting a set of signals that will serve for diagnosis of various retinal pathologies. Automatic retinal vessel segmentation can lead to a more accurate diagnosis. This paper presents a framework for automatic vessel segmentation of lower-resolution retinal images taken with a smartphone equipped with D-EYE lens. The framework is evaluated and the attained results were presented. A dataset was assembled and annotated of train models for automatic localisation retinal areas and for vessel segmentation. For the framework, two CNN based models were successfully trained, a Faster R-CNN that achieved a 96% correct detected of all regions with an MAE of 39 pixels, and a U-Net that achieved a DICE of 0.7547.

Tipo de Documento Comunicação em conferência
Idioma Inglês
Contribuidor(es) Repositório IC-Online
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