Deformable 3D Convolution for Video Super-Resolution
About
The spatio-temporal information among video sequences is significant for video super-resolution (SR). However, the spatio-temporal information cannot be fully used by existing video SR methods since spatial feature extraction and temporal motion compensation are usually performed sequentially. In this paper, we propose a deformable 3D convolution network (D3Dnet) to incorporate spatio-temporal information from both spatial and temporal dimensions for video SR. Specifically, we introduce deformable 3D convolution (D3D) to integrate deformable convolution with 3D convolution, obtaining both superior spatio-temporal modeling capability and motion-aware modeling flexibility. Extensive experiments have demonstrated the effectiveness of D3D in exploiting spatio-temporal information. Comparative results show that our network achieves state-of-the-art SR performance. Code is available at: https://github.com/XinyiYing/D3Dnet.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Video Super-Resolution | Vid4 | Average Y PSNR26.52 | 32 | |
| Video Super-Resolution | SPMCS-11 | PSNR28.78 | 15 | |
| Video Super-Resolution | Vimeo-90k | PSNR35.65 | 8 | |
| Video Super-Resolution | Vid4 | T-MOVIE15.45 | 7 |