In this paper, we present D2C-SR, a novel framework for the task of real-world image super-resolution. As an ill-posed problem, the key challenge in super-resolution related tasks is there can be multiple predictions for a given low-resolution input. Most classical deep learning based approaches ignored the fundamental fact and lack explicit modeling of the underlying high-frequency distribution which leads to blurred results. Recently, some methods of GAN-based or learning super-resolution space can generate simulated textures but do not promise the accuracy of the textures which have low quantitative performance. Rethinking both, we learn the distribution of underlying high-frequency details in a discrete form and propose a two-stage pipeline: divergence stage to convergence stage. At divergence stage, we propose a tree-based structure deep network as our divergence backbone. Divergence loss is proposed to encourage the generated results from the tree-based network to diverge into possible high-frequency representations, which is our way of discretely modeling the underlying high-frequency distribution. At convergence stage, we assign spatial weights to fuse these divergent predictions to obtain the final output with more accurate details. Our approach provides a convenient end-to-end manner to inference. We conduct evaluations on several real-world benchmarks, including a new proposed D2CRealSR dataset with x8 scaling factor. Our experiments demonstrate that D2C-SR achieves better accuracy and visual improvements against state-of-the-art methods, with a significantly less parameters number and our D2C structure can also be applied as a generalized structure to some other methods to obtain improvement. Our codes and dataset are available at https://github.com/megvii-research/D2C-SR
翻译:在本文中,我们展示了D2C-SR,这是真实世界图像超分辨率任务的新框架。作为一个问题,超级分辨率相关任务的关键挑战在于对特定低分辨率输入进行多重预测。最典型的深层次学习方法忽视了基本事实,缺乏对导致结果模糊的深层高频分布的清晰模型。最近,一些基于GAN的或学习超分辨率空间的方法可以生成模拟质谱,但并不能保证在数量上表现低的质谱的准确性。作为一个问题,我们重新思考两个问题,即超级分辨率相关任务的关键参数的分布可能是对给定的低分辨率输入的多重预测。在差异阶段,我们提议以基于树的深层次结构网络作为我们差异的骨干。提议差异性损失是为了鼓励基于树的网络所产生的结果变成可能的高频表达方式,这是我们对基础普遍频率分布改进的离析式模型。在趋同阶段,我们分配空间重量,将这些差异性高频率结构以离异的S-C结构以离散的形式进行分配,并提出两阶段的管道管道:从临界阶段至更精确的数据细节。我们提议的D-C进行最后的排序。我们提出的数据转换方法可以显示我们的最后数据分析。