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Incremental Learning For Fundus Image Segmentation

Authors:
Javier Civit-Masot
Luis Muñoz-Saavedra
Francisco Luna-Perejon
Juan Manuel Montes-Sanchez
Manuel Dominguez-Morales

Keywords: Deep learning; Incremental Learning; U-Net; Im-age Segmentation; Eye Fundus; Optic disc; Glaucoma Detection

Abstract:
Automated Fundus image segmentation is tradition-ally done in the image acquisition instrument and, thus, in thiscase it only needs to be able to segment data from this acquisitionsource. Cloud providers support multi GPU and TPU virtualmachines making attractive the idea of cloud-based segmentationan interesting possibility. To implement this idea we need to makecorrect predictions for fundus coming from different sources.In this paper we study the possibility of building a web basesegmentation service using incremental training, i.e, we initiallytrain the system using data from a single data set and, afterwards,perform retraining with data from other acquisition sources. Weare able to show that this type of training is efficient and canprovide good results suitable for web-based segmentation.

Pages: 5 to 8

Copyright: Copyright (c) IARIA, 2020

Publication date: March 22, 2020

Published in: conference

ISSN: 2308-4359

ISBN: 978-1-61208-763-4

Location: Valencia, Spain

Dates: from November 21, 2020 to November 25, 2020