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Attention2AngioGAN: Synthesizing Fluorescein Angiography from Retinal Fundus Images using Generative Adversarial Networks

About

Fluorescein Angiography (FA) is a technique that employs the designated camera for Fundus photography incorporating excitation and barrier filters. FA also requires fluorescein dye that is injected intravenously, which might cause adverse effects ranging from nausea, vomiting to even fatal anaphylaxis. Currently, no other fast and non-invasive technique exists that can generate FA without coupling with Fundus photography. To eradicate the need for an invasive FA extraction procedure, we introduce an Attention-based Generative network that can synthesize Fluorescein Angiography from Fundus images. The proposed gan incorporates multiple attention based skip connections in generators and comprises novel residual blocks for both generators and discriminators. It utilizes reconstruction, feature-matching, and perceptual loss along with adversarial training to produces realistic Angiograms that is hard for experts to distinguish from real ones. Our experiments confirm that the proposed architecture surpasses recent state-of-the-art generative networks for fundus-to-angio translation task.

Sharif Amit Kamran, Khondker Fariha Hossain, Alireza Tavakkoli, Stewart Lee Zuckerbrod• 2020

Related benchmarks

TaskDatasetResultRank
Image-to-Image TranslationRetinal Fundus-to-Angiogram (test)
FID19.5
42
Image-to-Image TranslationFundus-to-Angiography Original (test)
FID20.7
7
Image-to-Image TranslationFundus-to-Angiography Noise (test)
FID20.8
7
Image-to-Image TranslationFundus-to-Angiography Blur (test)
FID23.5
7
Image-to-Image TranslationFundus-to-Angiography Sharp (test)
FID24.9
7
Image-to-Image TranslationFundus-to-Angiography Whirl (test)
FID27.8
7
Image-to-Image TranslationFundus-to-Angiography Pinch (test)
FID19.5
7
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