Fundus images are very useful in identifying various ophthalmic disorders. However, due to the presence of artifacts, the visibility of the retina is severely affected. This may result in misdiagnosis of the disorder which may lead to more complicated problems. Since deep learning is a powerful tool to extract patterns from data without much human intervention, they can be applied to image-to-image translation problems. An attempt has been made in this paper to automatically rectify such artifacts present in the images of the fundus. We use a CycleGAN based model which consists of residual blocks to reduce the artifacts in the images. Significant improvements are seen when compared to the existing techniques.
翻译:Fundus图像在确定各种眼神障碍方面非常有用,然而,由于存在人工制品,视网膜的可见度受到严重影响,这可能导致对可能导致更复杂问题的混乱症的错误诊断;由于深层次学习是从数据中提取模式的有力工具,而没有太多人力干预,因此可以将其应用于图像到图像的翻译问题;本文试图自动纠正这些在基金图像中发现的文物;我们使用以CyoleGAN为基础的模型,由残余块组成,以减少图像中的文物;与现有技术相比,可以看到显著的改进。