CDFI: Compression-Driven Network Design for Frame Interpolation
About
DNN-based frame interpolation--that generates the intermediate frames given two consecutive frames--typically relies on heavy model architectures with a huge number of features, preventing them from being deployed on systems with limited resources, e.g., mobile devices. We propose a compression-driven network design for frame interpolation (CDFI), that leverages model pruning through sparsity-inducing optimization to significantly reduce the model size while achieving superior performance. Concretely, we first compress the recently proposed AdaCoF model and show that a 10X compressed AdaCoF performs similarly as its original counterpart; then we further improve this compressed model by introducing a multi-resolution warping module, which boosts visual consistencies with multi-level details. As a consequence, we achieve a significant performance gain with only a quarter in size compared with the original AdaCoF. Moreover, our model performs favorably against other state-of-the-arts in a broad range of datasets. Finally, the proposed compression-driven framework is generic and can be easily transferred to other DNN-based frame interpolation algorithm. Our source code is available at https://github.com/tding1/CDFI.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Video Frame Interpolation | Vimeo90K (test) | PSNR35.17 | 131 | |
| Video Interpolation | UCF-101 (test) | PSNR35.21 | 65 | |
| Video Frame Interpolation | SNU-FILM Easy | PSNR40.12 | 59 | |
| Video Frame Interpolation | SNU-FILM Medium | PSNR35.51 | 59 | |
| Video Frame Interpolation | SNU-FILM Hard | PSNR29.73 | 59 | |
| Video Frame Interpolation | SNU-FILM Extreme | PSNR24.53 | 59 | |
| Video Frame Interpolation | UCF101 (test) | PSNR35.21 | 41 | |
| Video Frame Interpolation | Xiph 4K (test) | PSNR33.01 | 25 | |
| Video Frame Interpolation | Middlebury | PSNR37.14 | 24 | |
| Video Frame Interpolation | SNU-FILM (test) | PSNR (Easy)40.12 | 23 |