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Takashi Isobe Xu Jia Shuhang Gu Songjiang Li Shengjin Wang Qi Tian

Abstract
Most video super-resolution methods super-resolve a single reference frame with the help of neighboring frames in a temporal sliding window. They are less efficient compared to the recurrent-based methods. In this work, we propose a novel recurrent video super-resolution method which is both effective and efficient in exploiting previous frames to super-resolve the current frame. It divides the input into structure and detail components which are fed to a recurrent unit composed of several proposed two-stream structure-detail blocks. In addition, a hidden state adaptation module that allows the current frame to selectively use information from hidden state is introduced to enhance its robustness to appearance change and error accumulation. Extensive ablation study validate the effectiveness of the proposed modules. Experiments on several benchmark datasets demonstrate the superior performance of the proposed method compared to state-of-the-art methods on video super-resolution.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| video-super-resolution-on-msu-super-1 | RSDN + vvenc | BSQ-rate over ERQA: 14.95 BSQ-rate over LPIPS: 4.866 BSQ-rate over MS-SSIM: 9.138 BSQ-rate over PSNR: 14.061 BSQ-rate over VMAF: 10.145 |
| video-super-resolution-on-msu-super-1 | RSDN + x265 | BSQ-rate over ERQA: 13.416 BSQ-rate over LPIPS: 13.232 BSQ-rate over MS-SSIM: 5.682 BSQ-rate over PSNR: 13.403 BSQ-rate over VMAF: 6.467 |
| video-super-resolution-on-msu-super-1 | RSDN + aomenc | BSQ-rate over ERQA: 20.617 BSQ-rate over LPIPS: 14.574 BSQ-rate over MS-SSIM: 11.643 BSQ-rate over PSNR: 15.144 BSQ-rate over VMAF: 10.67 |
| video-super-resolution-on-msu-super-1 | RSDN + x264 | BSQ-rate over ERQA: 6.58 BSQ-rate over LPIPS: 10.775 BSQ-rate over MS-SSIM: 1.023 BSQ-rate over PSNR: 13.348 BSQ-rate over VMAF: 1.5 |
| video-super-resolution-on-msu-super-1 | RSDN + uavs3e | BSQ-rate over ERQA: 18.327 BSQ-rate over LPIPS: 13.844 BSQ-rate over MS-SSIM: 11.643 BSQ-rate over PSNR: 15.144 BSQ-rate over VMAF: 9.796 |
| video-super-resolution-on-msu-vsr-benchmark | RSDN | 1 - LPIPS: 0.819 ERQAv1.0: 0.667 FPS: 1.961 PSNR: 25.321 QRCRv1.0: 0.619 SSIM: 0.826 Subjective score: 5.566 |
| video-super-resolution-on-vid4-4x-upscaling-1 | RSDN | PSNR: 27.92 SSIM: 0.8505 |
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