Publication | Closed Access
Recurrent Back-Projection Network for Video Super-Resolution
553
Citations
31
References
2019
Year
Unknown Venue
Machine VisionMachine LearningImage AnalysisEngineeringSingle-image Super-resolutionVideo HallucinationVideo Super-resolutionRecurrent Back-projection NetworkVideo UnderstandingDeep LearningVideo RestorationMultiple-image Super-resolutionComputer Vision
We proposed a novel architecture for the problem of video super-resolution. We integrate spatial and temporal contexts from continuous video frames using a recurrent encoder-decoder module, that fuses multi-frame information with the more traditional, single frame super-resolution path for the target frame. In contrast to most prior work where frames are pooled together by stacking or warping, our model, the Recurrent Back-Projection Network (RBPN) treats each context frame as a separate source of information. These sources are combined in an iterative refinement framework inspired by the idea of back-projection in multiple-image super-resolution. This is aided by explicitly representing estimated inter-frame motion with respect to the target, rather than explicitly aligning frames. We propose a new video super-resolution benchmark, allowing evaluation at a larger scale and considering videos in different motion regimes. Experimental results demonstrate that our RBPN is superior to existing methods on several datasets.
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