Real-world face super-resolution (SR) is a highly ill-posed image restoration task. The fully-cycled Cycle-GAN architecture is widely employed to achieve promising performance on face SR, but prone to produce artifacts upon challenging cases in real-world scenarios, since joint participation in the same degradation branch will impact final performance due to huge domain gap between real-world and synthetic LR ones obtained by generators. To better exploit the powerful generative capability of GAN for real-world face SR, in this paper, we establish two independent degradation branches in the forward and backward cycle-consistent reconstruction processes, respectively, while the two processes share the same restoration branch. Our Semi-Cycled Generative Adversarial Networks (SCGAN) is able to alleviate the adverse effects of the domain gap between the real-world LR face images and the synthetic LR ones, and to achieve accurate and robust face SR performance by the shared restoration branch regularized by both the forward and backward cycle-consistent learning processes. Experiments on two synthetic and two real-world datasets demonstrate that, our SCGAN outperforms the state-of-the-art methods on recovering the face structures/details and quantitative metrics for real-world face SR. The code will be publicly released at https://github.com/HaoHou-98/SCGAN.
翻译:现实世界面临超级分辨率(SR)是一个非常糟糕的图像恢复任务。 完全循环全球网络架构被广泛用于实现在面对斯洛伐克的有希望的业绩,但很容易在现实世界情景下出现具有挑战性的情况时产生艺术品,因为共同参与同一退化分支将影响最终业绩,因为由于实际世界与由发电机获得的合成LR之间的领域差距巨大,共同参与同一退化分支将影响最终业绩。为了更好地利用全球网络在现实世界面临斯洛伐克时的强大发源能力,我们在本文件中分别在前向和后向周期一致重建进程中建立了两个独立的退化分支,而两个进程是相同的复原分支。 我们的半循环虚拟基因反versarial网络(SCGAN)能够减轻现实世界图像与合成LR图像之间的领域差距的不利影响,并且通过由前向和后向周期一致学习进程调整的共同恢复分支实现准确和稳健的性健康和生殖健康业绩。 在两个合成和后周期一致的重建进程中的两个实体世界数据集的实验表明,我们的SCCAN-ARED-S-S-S-SDFS-SD-Sal-Simal-commacal-commal-comstal-comstal-commadal-commadal-commas ress resmal-comm-commal-st-commal-st-commal-commal-comm-comm-comm-comm-comm-comm-comm-s)将显示我们正正正正正正正正正正正正/al-comm-comm-ma-sm-sm-sm-sm-sm-sm-sm-sm-s-s-s-s-s-s-s-s-s-s-s-s-s-smal-s-st-s-s-s-s-s-s-s-s-s-comm-s-comm-al-sm-sm-s-s-s-s-s-s-s-s-s-s-al-s-al-s-s-s-s-s-al-s-s-s-s-s-s-smasmasal-al-s-s-s-s-sma-s-