Most of the existing works in supervised spatio-temporal video super-resolution (STVSR) heavily rely on a large-scale external dataset consisting of paired low-resolution low-frame rate (LR-LFR)and high-resolution high-frame-rate (HR-HFR) videos. Despite their remarkable performance, these methods make a prior assumption that the low-resolution video is obtained by down-scaling the high-resolution video using a known degradation kernel, which does not hold in practical settings. Another problem with these methods is that they cannot exploit instance-specific internal information of video at testing time. Recently, deep internal learning approaches have gained attention due to their ability to utilize the instance-specific statistics of a video. However, these methods have a large inference time as they require thousands of gradient updates to learn the intrinsic structure of the data. In this work, we presentAdaptiveVideoSuper-Resolution (Ada-VSR) which leverages external, as well as internal, information through meta-transfer learning and internal learning, respectively. Specifically, meta-learning is employed to obtain adaptive parameters, using a large-scale external dataset, that can adapt quickly to the novel condition (degradation model) of the given test video during the internal learning task, thereby exploiting external and internal information of a video for super-resolution. The model trained using our approach can quickly adapt to a specific video condition with only a few gradient updates, which reduces the inference time significantly. Extensive experiments on standard datasets demonstrate that our method performs favorably against various state-of-the-art approaches.
翻译:监督时空视频超分辨率(STVSR)的现有大部分作品都严重依赖大型外部数据集,包括配对的低分辨率低框架率(LR-LFR)和高分辨率高框架率(HR-HFR)视频。尽管这些方法表现出色,但它们预先假定低分辨率视频是通过在实际环境下无法维持的已知低分辨率内核(Ada-VSR)降尺度获取的,这些方法的另一个问题是它们无法在测试时利用具体实例的视频内部信息。最近,深层次的内部学习方法由于能够使用视频的特定实例统计数据(LRR-LFR)和高分辨率高清晰度高框架率视频(HR-HFR)视频。尽管这些方法表现出色,但这些方法还是先假定低分辨率视频视频视频是通过在高分辨率内核缩(Ada-VSR)获得的,而仅利用外部信息,通过元转移学习和内部学习,而内部信息。 具体化的学习方法被用来迅速获得适应性参数,从而利用大规模测试性升级的外部数据,从而在内部测试条件期间,利用一个经过培训的外部数据测试的外部数据,可以大幅调整的外部数据,从而在内部测试中进行内部数据测试中进行新的升级。