论文标题
真实世界图像超分辨率通过排除双学习
Real-World Image Super-Resolution by Exclusionary Dual-Learning
论文作者
论文摘要
现实世界图像超分辨率是一个实用的图像恢复问题,旨在从野外输入中获取高质量的图像,最近在其巨大的应用潜力方面受到了极大的关注。尽管基于深度学习的方法已经在现实世界图像超分辨率数据集上实现了有希望的恢复质量,但它们忽略了L1-和感知最小化之间的关系,并且大致采用了辅助大规模数据集进行预训练。在本文中,我们讨论了损坏的图像中的图像类型以及基于知觉和欧几里得的评估协议的属性。然后,我们通过排除双学习(RWSR-EDL)提出了一种方法,真实世界图像超分辨率,以解决基于感知和L1的合作学习中的特征多样性。此外,开发了一种噪声引导数据收集策略来解决多个数据集优化的训练时间消耗。合并辅助数据集后,RWSR-EDL实现了有希望的结果,并通过采用噪声引导数据收集策略来排斥任何训练时间增加。广泛的实验表明,RWSR-EDL在四个内部图像超分辨率数据集上的最先进方法上实现了竞争性能。
Real-world image super-resolution is a practical image restoration problem that aims to obtain high-quality images from in-the-wild input, has recently received considerable attention with regard to its tremendous application potentials. Although deep learning-based methods have achieved promising restoration quality on real-world image super-resolution datasets, they ignore the relationship between L1- and perceptual- minimization and roughly adopt auxiliary large-scale datasets for pre-training. In this paper, we discuss the image types within a corrupted image and the property of perceptual- and Euclidean- based evaluation protocols. Then we propose a method, Real-World image Super-Resolution by Exclusionary Dual-Learning (RWSR-EDL) to address the feature diversity in perceptual- and L1- based cooperative learning. Moreover, a noise-guidance data collection strategy is developed to address the training time consumption in multiple datasets optimization. When an auxiliary dataset is incorporated, RWSR-EDL achieves promising results and repulses any training time increment by adopting the noise-guidance data collection strategy. Extensive experiments show that RWSR-EDL achieves competitive performance over state-of-the-art methods on four in-the-wild image super-resolution datasets.