论文标题
FS-NCSR:通过频率分离和噪声标准化流量增加超分辨率空间的多样性
FS-NCSR: Increasing Diversity of the Super-Resolution Space via Frequency Separation and Noise-Conditioned Normalizing Flow
论文作者
论文摘要
超分辨率遭受了先天性不足的问题,即单个低分辨率(LR)图像可以来自多个高分辨率(HR)图像。关于基于流动算法的最新研究通过学习超分辨率空间并预测不同的人力资源输出来解决这种不适的性。不幸的是,超分辨率输出的多样性仍然不令人满意,而基于流的模型的输出通常会遭受导致低质量输出的不希望的人工制品。在本文中,我们提出了FS-NCSR,该FS-NCSR与现有的基于流动的方法相比,使用频率分离和噪声调理产生多样化和高质量的超分辨率输出。由于图像的清晰度和高质量的细节取决于其高频信息,FS-NCSR仅估算没有冗余低频组件的高分辨率输出的高频信息。通过此,与NCSR相比,FS-NCSR显着提高了多样性评分而没有明显的图像质量降解,而NCSR是前NTIRE 2021挑战的获胜者。
Super-resolution suffers from an innate ill-posed problem that a single low-resolution (LR) image can be from multiple high-resolution (HR) images. Recent studies on the flow-based algorithm solve this ill-posedness by learning the super-resolution space and predicting diverse HR outputs. Unfortunately, the diversity of the super-resolution outputs is still unsatisfactory, and the outputs from the flow-based model usually suffer from undesired artifacts which causes low-quality outputs. In this paper, we propose FS-NCSR which produces diverse and high-quality super-resolution outputs using frequency separation and noise conditioning compared to the existing flow-based approaches. As the sharpness and high-quality detail of the image rely on its high-frequency information, FS-NCSR only estimates the high-frequency information of the high-resolution outputs without redundant low-frequency components. Through this, FS-NCSR significantly improves the diversity score without significant image quality degradation compared to the NCSR, the winner of the previous NTIRE 2021 challenge.