Nosie is an important cause of low quality Optical coherence tomography (OCT) image. The neural network model based on Convolutional neural networks(CNNs) has demonstrated its excellent performance in image denoising. However, OCT image denoising still faces great challenges because many previous neural network algorithms required a large number of labeled data, which might cost much time or is expensive. Besides, these CNN-based algorithms need numerous parameters and good tuning techniques, which is hardware resources consuming. To solved above problems, We proposed a new Cycle-Consistent Generative Adversarial Nets called Dual-Merged Cycle-WGAN for retinal OCT image denoiseing, which has remarkable performance with less unlabeled traning data. Our model consists of two Cycle-GAN networks with imporved generator, descriminator and wasserstein loss to achieve good training stability and better performance. Using image merge technique between two Cycle-GAN networks, our model could obtain more detailed information and hence better training effect. The effectiveness and generality of our proposed network has been proved via ablation experiments and comparative experiments. Compared with other state-of-the-art methods, our unsupervised method obtains best subjective visual effect and higher evaluation objective indicators.
翻译:诺西是低质量光学一致性断层成像学(OCT)图像的重要原因。 以进化神经网络(CNNs)为基础的神经网络新模型在图像脱线方面表现优异。 然而,OCT图像脱色仍面临巨大的挑战,因为许多先前的神经网络算法需要大量标签数据,这可能花费很多时间或昂贵。此外,这些CNN算法需要许多参数和良好的调控技术,这是耗资的硬件资源。为了解决上述问题,我们提出了一个新的循环网络模型,称为双元循环网络,称为双元循环-WGAN,用于对视离线的OCT图像进行隐蔽,其性能与较少的无标签三角数据相比。我们的模型包括两个循环-GAN网络,其中含有不透电的生成器、断线器和偏振动器,以获得良好的培训稳定性和更好的性能。我们的两个循环-GAN网络,利用图像合并技术,我们的模型可以获得更详细的信息,从而产生更好的培训效果。我们拟议网络的有效性和一般性,通过一个不精确的对比性实验和比较方法,获得了最佳的比较结果。