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Yanpeng Cao Chengcheng Wang Changjun Song Yongming Tang He Li

Abstract
Video super-resolution (VSR) technology excels in reconstructing low-quality video, avoiding unpleasant blur effect caused by interpolation-based algorithms. However, vast computation complexity and memory occupation hampers the edge of deplorability and the runtime inference in real-life applications, especially for large-scale VSR task. This paper explores the possibility of real-time VSR system and designs an efficient and generic VSR network, termed EGVSR. The proposed EGVSR is based on spatio-temporal adversarial learning for temporal coherence. In order to pursue faster VSR processing ability up to 4K resolution, this paper tries to choose lightweight network structure and efficient upsampling method to reduce the computation required by EGVSR network under the guarantee of high visual quality. Besides, we implement the batch normalization computation fusion, convolutional acceleration algorithm and other neural network acceleration techniques on the actual hardware platform to optimize the inference process of EGVSR network. Finally, our EGVSR achieves the real-time processing capacity of 4K@29.61FPS. Compared with TecoGAN, the most advanced VSR network at present, we achieve 85.04% reduction of computation density and 7.92x performance speedups. In terms of visual quality, the proposed EGVSR tops the list of most metrics (such as LPIPS, tOF, tLP, etc.) on the public test dataset Vid4 and surpasses other state-of-the-art methods in overall performance score. The source code of this project can be found on https://github.com/Thmen/EGVSR.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| video-super-resolution-on-msu-super-1 | EGVSR + x265 | BSQ-rate over ERQA: 12.917 BSQ-rate over LPIPS: 10.748 BSQ-rate over MS-SSIM: 5.548 BSQ-rate over PSNR: 10.701 BSQ-rate over VMAF: 6.497 |
| video-super-resolution-on-msu-super-1 | EGVSR + uavs3e | BSQ-rate over ERQA: 10.1 BSQ-rate over LPIPS: 4.0 BSQ-rate over MS-SSIM: 8.194 BSQ-rate over PSNR: 15.144 BSQ-rate over VMAF: 10.337 |
| video-super-resolution-on-msu-super-1 | EGVSR + x264 | BSQ-rate over ERQA: 6.029 BSQ-rate over LPIPS: 1.226 BSQ-rate over MS-SSIM: 1.196 BSQ-rate over PSNR: 10.595 BSQ-rate over VMAF: 1.519 |
| video-super-resolution-on-msu-super-1 | EGVSR + aomenc | BSQ-rate over ERQA: 16.733 BSQ-rate over LPIPS: 5.67 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 | EGVSR + vvenc | BSQ-rate over ERQA: 13.684 BSQ-rate over LPIPS: 10.643 BSQ-rate over MS-SSIM: 6.209 BSQ-rate over PSNR: 11.543 BSQ-rate over VMAF: 10.163 |
| video-super-resolution-on-msu-video-upscalers | EGVSR | PSNR: 26.33 SSIM: 0.929 VMAF: 60.39 |
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