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Fundus Image Enhancement Method Based on CycleGAN

机译:基于Crycargan的眼底图像增强方法

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摘要

In this paper, we propose a retinal image enhancement method, called Cycle-CBAM, which is based on CycleGAN to realize the migration from poor quality fundus images to good quality fundus images. It does not require paired training set any more, that is critical since it is quite difficult to obtain paired medical images. In order to solve the degeneration of texture and detail caused by training unpaired images, we enhance the CycleGAN by adopting the Convolutional Block Attention Module (CBAM). To verify the enhancement effect of our method, we not only analyzed the enhanced fundus image quantitatively and qualitatively, but also introduced a diabetic retinopathy (DR) classification module to evaluate the DR level of the fundus images before and after enhancement. The experiments show that our method of integrating CBAM into CycleGAN has superior performance than CycleGAN both in quantitative and qualitative results.
机译:在本文中,我们提出了一种视网膜图像增强方法,称为Cycle-CBAM,其基于CycleanGan,实现从劣质基底图像到良好质量的眼底图像的迁移。它不再需要配对训练设置,这是至关重要的,因为很难获得配对的医学图像。为了解决由训练未配对图像引起的质地和细节的退化,我们通过采用卷积块注意模块(CBAM)来增强Conscangan。为了验证我们方法的增强效果,我们不仅定量和定性地分析了增强的眼底图像,而且还引入了糖尿病视网膜病变(DR)分类模块,以在增强之前和之后评估眼底图像的DR水平。实验表明,我们将CBAM集成到Corpygan中的方法具有优异的性能,而不是定量和定性结果。

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