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Retinal image synthesis from multiple-landmarks input with generative adversarial networks.

Zekuan YuQing XiangJiahao MengCaixia KouQiushi RenYanye Lu
Published in: Biomedical engineering online (2019)
As shown in the results, the proposed MCML method outperforms the single vessel-based methods for each architecture of GANs. Furthermore, we find that our Pix2pix model with ResU-net generator achieves superior PSNR and SSIM performance than the other GANs. High-resolution paired images are also beneficial for improving the performance of each GAN in this work. Finally, a Pix2pix network with ResU-net generator using MCML and high-resolution paired images are able to generate good and realistic fundus images in this work, indicating that our MCML method has great potential in the field of glaucoma computer-aided diagnosis based on fundus image.
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