Though many attempts have been made in blind super-resolution to restore low-resolution images with unknown and complex degradations, they are still far from addressing general real-world degraded images. In this work, we extend the powerful ESRGAN to a practical restoration application (namely, Real-ESRGAN), which is trained with pure synthetic data. Specifically, a high-order degradation modeling process is introduced to better simulate complex real-world degradations. We also consider the common ringing and overshoot artifacts in the synthesis process. In addition, we employ a U-Net discriminator with spectral normalization to increase discriminator capability and stabilize the training dynamics. Extensive comparisons have shown its superior visual performance than prior works on various real datasets. We also provide efficient implementations to synthesize training pairs on the fly.
翻译:尽管在盲目超分辨率中进行了许多尝试,以恢复低分辨率图像,其降解程度未知和复杂,但它们仍然远远没有解决一般真实世界退化图像的问题。 在这项工作中,我们把强大的ESRGAN推广到实际的恢复应用(即Real-ESRGAN),该应用经过纯合成数据培训。具体地说,引入了高级降解模型进程,以更好地模拟复杂的现实世界退化。我们还考虑了合成过程中常见的响声和超发件件件。此外,我们使用了光谱正常化的U-Net分析器,以提高歧视者的能力并稳定培训动态。广泛的比较表明,它比以往各种真实数据集的工程具有更高的视觉性能。我们还提供了高效的实施,以合成对苍蝇的培训配对。