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Revisiting Temporal Modeling for Video Super-resolution

About

Video super-resolution plays an important role in surveillance video analysis and ultra-high-definition video display, which has drawn much attention in both the research and industrial communities. Although many deep learning-based VSR methods have been proposed, it is hard to directly compare these methods since the different loss functions and training datasets have a significant impact on the super-resolution results. In this work, we carefully study and compare three temporal modeling methods (2D CNN with early fusion, 3D CNN with slow fusion and Recurrent Neural Network) for video super-resolution. We also propose a novel Recurrent Residual Network (RRN) for efficient video super-resolution, where residual learning is utilized to stabilize the training of RNN and meanwhile to boost the super-resolution performance. Extensive experiments show that the proposed RRN is highly computational efficiency and produces temporal consistent VSR results with finer details than other temporal modeling methods. Besides, the proposed method achieves state-of-the-art results on several widely used benchmarks.

Takashi Isobe, Fang Zhu, Xu Jia, Shengjin Wang• 2020

Related benchmarks

TaskDatasetResultRank
Video Super-ResolutionVid4 (test)
PSNR27.69
173
Video Super-ResolutionUDM10 (test)
PSNR38.96
51
Video Super-ResolutionSPMCS (test)
Avg. PSNR29.84
36
Video Super-ResolutionUDM10 BD degradation (test)
PSNR38.96
31
Video Super-ResolutionVid4 Y (test)
PSNR27.69
30
Video Super-ResolutionVid4 BD degradation 21 (test)
PSNR27.69
25
Video Super-ResolutionREDS4 RGB (test)
PSNR28.82
25
Video Super-ResolutionUDM10 89 (test)
PSNR38.96
20
Video Super-ResolutionUDM10 BD degradation, Y channel
PSNR38.96
19
Video Super-ResolutionVid4 BD degradation Y channel
PSNR27.69
19
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