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Yinxiao Li Pengchong Jin Feng Yang Ce Liu Ming-Hsuan Yang Peyman Milanfar

Abstract
Most video super-resolution methods focus on restoring high-resolution video frames from low-resolution videos without taking into account compression. However, most videos on the web or mobile devices are compressed, and the compression can be severe when the bandwidth is limited. In this paper, we propose a new compression-informed video super-resolution model to restore high-resolution content without introducing artifacts caused by compression. The proposed model consists of three modules for video super-resolution: bi-directional recurrent warping, detail-preserving flow estimation, and Laplacian enhancement. All these three modules are used to deal with compression properties such as the location of the intra-frames in the input and smoothness in the output frames. For thorough performance evaluation, we conducted extensive experiments on standard datasets with a wide range of compression rates, covering many real video use cases. We showed that our method not only recovers high-resolution content on uncompressed frames from the widely-used benchmark datasets, but also achieves state-of-the-art performance in super-resolving compressed videos based on numerous quantitative metrics. We also evaluated the proposed method by simulating streaming from YouTube to demonstrate its effectiveness and robustness. The source codes and trained models are available at https://github.com/google-research/google-research/tree/master/comisr.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| video-super-resolution-on-msu-super-1 | COMISR + aomenc | BSQ-rate over ERQA: 11.177 BSQ-rate over LPIPS: 4.801 BSQ-rate over MS-SSIM: 11.303 BSQ-rate over PSNR: 15.144 BSQ-rate over Subjective Score: 1.943 BSQ-rate over VMAF: 10.67 |
| video-super-resolution-on-msu-super-1 | COMISR + vvenc | BSQ-rate over ERQA: 13.246 BSQ-rate over LPIPS: 11.026 BSQ-rate over MS-SSIM: 6.024 BSQ-rate over PSNR: 11.497 BSQ-rate over Subjective Score: 0.701 BSQ-rate over VMAF: 8.105 |
| video-super-resolution-on-msu-super-1 | COMISR + uavs3e | BSQ-rate over ERQA: 3.427 BSQ-rate over LPIPS: 3.851 BSQ-rate over MS-SSIM: 7.711 BSQ-rate over PSNR: 5.761 BSQ-rate over Subjective Score: 1.229 BSQ-rate over VMAF: 9.47 |
| video-super-resolution-on-msu-super-1 | COMISR + x264 | BSQ-rate over ERQA: 0.969 BSQ-rate over LPIPS: 1.118 BSQ-rate over MS-SSIM: 0.672 BSQ-rate over PSNR: 6.081 BSQ-rate over Subjective Score: 0.367 BSQ-rate over VMAF: 1.302 |
| video-super-resolution-on-msu-super-1 | COMISR + x265 | BSQ-rate over ERQA: 8.139 BSQ-rate over LPIPS: 12.998 BSQ-rate over MS-SSIM: 4.793 BSQ-rate over PSNR: 10.678 BSQ-rate over Subjective Score: 0.741 BSQ-rate over VMAF: 6.363 |
| video-super-resolution-on-msu-video-upscalers | COMISR | LPIPS: 0.291 PSNR: 30.97 SSIM: 0.871 |
| video-super-resolution-on-msu-vsr-benchmark | COMISR | 1 - LPIPS: 0.879 ERQAv1.0: 0.654 FPS: 1.613 PSNR: 26.708 QRCRv1.0: 0.619 SSIM: 0.84 Subjective score: 5.637 |
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