Video super-resolution (VSR) aims at restoring a video in low-resolution (LR) and improving it to higher-resolution (HR). Due to the characteristics of video tasks, it is very important that motion information among frames should be well concerned, summarized and utilized for guidance in a VSR algorithm. Especially, when a video contains large motion, conventional methods easily bring incoherent results or artifacts. In this paper, we propose a novel deep neural network with Dual Subnet and Multi-stage Communicated Upsampling (DSMC) for super-resolution of videos with large motion. We design a new module named U-shaped residual dense network with 3D convolution (U3D-RDN) for fine implicit motion estimation and motion compensation (MEMC) as well as coarse spatial feature extraction. And we present a new Multi-Stage Communicated Upsampling (MSCU) module to make full use of the intermediate results of upsampling for guiding the VSR. Moreover, a novel dual subnet is devised to aid the training of our DSMC, whose dual loss helps to reduce the solution space as well as enhance the generalization ability. Our experimental results confirm that our method achieves superior performance on videos with large motion compared to state-of-the-art methods.
翻译:超分辨率视频(VSR)旨在恢复低分辨率视频并将其改进为高分辨率视频(HR)。由于视频任务的特点,非常重要的是各框架之间的运动信息应当受到关注、汇总和用于VSR算法的指导。特别是,当视频包含大型运动、常规方法容易带来不一致的结果或人工制品时,视频超分辨率超分辨率视频(VSR)旨在恢复低分辨率视频(LR)并将其改进为高分辨率视频(HR)。由于视频任务的特点,我们设计了一个名为U型剩余密度网络(U3D-RDN)的新模块,用于精细的隐含运动估计和运动补偿(MEMC)以及粗略的空间特征提取。我们介绍了一个新的多链式集成放大模块,以充分利用用于指导VSR(DSR)的中间取样结果。此外,我们设计了一个新的双子网络,用于协助培训我们的DSMC,其双重损失有助于降低我们高分辨率空间的双向损失,从而证实我们高分辨率空间的实验性能与我们高分辨率的图像相比,从而增强我们的高级空间的性能。