Deep Convolutional Neural Networks (DCNNs) have exhibited impressive performance on image super-resolution tasks. However, these deep learning-based super-resolution methods perform poorly in real-world super-resolution tasks, where the paired high-resolution and low-resolution images are unavailable and the low-resolution images are degraded by complicated and unknown kernels. To break these limitations, we propose the Unsupervised Bi-directional Cycle Domain Transfer Learning-based Generative Adversarial Network (UBCDTL-GAN), which consists of an Unsupervised Bi-directional Cycle Domain Transfer Network (UBCDTN) and the Semantic Encoder guided Super Resolution Network (SESRN). First, the UBCDTN is able to produce an approximated real-like LR image through transferring the LR image from an artificially degraded domain to the real-world LR image domain. Second, the SESRN has the ability to super-resolve the approximated real-like LR image to a photo-realistic HR image. Extensive experiments on unpaired real-world image benchmark datasets demonstrate that the proposed method achieves superior performance compared to state-of-the-art methods.
翻译:深革命神经网络(DCNNS)在图像超分辨率任务上表现出了令人印象深刻的成绩。然而,这些深深深的学习基础超分辨率方法在现实世界超分辨率任务中表现不佳,因为没有配对的高分辨率和低分辨率图像,低分辨率图像被复杂和未知的内核降解。为了打破这些限制,我们提议建立无人监督的双向循环传输基于学习的基于学习的源性反向网络(UBCDTL-GAN),其中包括一个无人监督的双向循环磁性磁性传输网络(UBCDTN)和Semistic Encoder导导超分辨率网络(SESSRN)。首先,UBCDTN通过将L图像从人工退化的域转移到真实世界的LL图像域,能够产生一种近似真实的LR图像。第二,SERN有能力将近似真实的LL图像超级解析出到一个摄影现实的HR图像。在未定位的图像上进行广泛的实验,从而实现了比较真实的图像基准性方法。