生成对抗网络的预处理分析:彩色眼底镜到荧光素血管造影图像到图像转换的案例研究

Veena K.M. , Veena Mayya , Rashmi Naveen Raj , Sulatha V. Bhandary , Uma Kulkarni
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引用次数: 0

摘要

生成对抗网络(GANs)在成对或非成对图像到图像的翻译应用中引起了同行研究人员的注意,特别是在视网膜图像处理领域。此外,有几种有效的图像预处理技术可以显著提高gan的性能。本研究考察了五种不同的图像预处理技术——绿色通道、CLAHE对绿色通道、CLAHE对RGB通道、绿色通道高斯卷积和RGB高斯卷积——对五种不同的GAN变体的影响:CycleGAN、Pix2Pix GAN、CUT GAN、FastCut GAN和NICE GAN。该研究进行了30个实验,以评估这些GAN变体在双模视网膜图像的图像到图像转换中的性能。评估利用Frechet Inception Distance (FID)和Kernel Inception Distance (KID)度量分数来衡量GAN变体的性能。结果表明,CycleGAN模型与CLAHE在RGB预处理图像上的表现最好,FID和KID得分最低,分别为103.49和0.038。这项研究强调了图像预处理技术在提高gan在图像翻译应用中的性能方面的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of preprocessing for Generative Adversarial Networks: A case study on color fundoscopy to fluorescein angiography image-to-image translation
Generative Adversarial Networks (GANs) are capturing the attention of peer researchers in paired or unpaired image-to-image translation applications, particularly in the domain of retinal image processing. Additionally, there are several effective image preprocessing techniques available that can significantly improve the performance of GANs. This study examines the impact of five different image preprocessing techniques - Green Channel, CLAHE on Green Channel, CLAHE on RGB channels, Green Channel Gaussian Convolution, and RGB Gaussian Convolution - on five different GAN variants: CycleGAN, Pix2Pix GAN, CUT GAN, FastCut GAN, and NICE GAN. The study involved conducting 30 experiments to assess the performances of these GAN variants in the image-to-image translation of dual-mode retinal images. The evaluation utilized Frechet Inception Distance (FID) and Kernel Inception Distance (KID) metric scores to measure the performance of the GAN variants. The results demonstrated that the CycleGAN model achieved the best performance with CLAHE on RGB preprocessed images, achieving the lowest FID and KID scores of 103.49 and 0.038, respectively. This investigation underscores the significant potential of image preprocessing techniques in enhancing the performance of GANs in image translation applications.
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来源期刊
CiteScore
5.90
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