Retinal image synthesis through the least action principle

D. Castro, Cesare Valenti, D. Tegolo
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引用次数: 3

Abstract

Eye fundus image analysis is a fundamental approach in medical diagnosis and follow-up ophthalmic diagnostics. Manual annotation by experts needs hard work, thus only a small set of annotated vessel structures is available. Examples such as DRIVE and STARE include small sets for training images of fundus image benchmarks. Moreover, there is no vessel structure annotation for a number of fundus image datasets. Synthetic images have been generated by using appropriate parameters for the modeling of vascular networks or by methods developing deep learning techniques and supported by performance hardware. Our methodology aims to produce high-resolution synthetic fundus images alternative to the increasing use of generative adversarial networks, to overcome the problems that arise in producing slightly modified versions of the same real images, to simulate pathologies and for the prediction of eye-related diseases. Our approach is based on the principle of the least action to place vessels on the simulated eye fundus.
利用最小作用原理合成视网膜图像
眼底图像分析是医学诊断和眼科后续诊断的基本手段。专家手工标注需要付出很大的努力,因此只有一小部分标注的船舶结构。DRIVE和STARE等例子包括用于眼底图像基准训练图像的小集。此外,许多眼底图像数据集没有血管结构注释。通过使用适当的血管网络建模参数或通过开发深度学习技术并由性能硬件支持的方法生成合成图像。我们的方法旨在生成高分辨率合成眼底图像,以替代越来越多地使用生成对抗网络,克服在生成相同真实图像的稍微修改版本时出现的问题,模拟病理和预测眼部相关疾病。我们的方法是基于最小动作的原则,在模拟眼底放置血管。
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