Ronglei Ji, A. Murat Tekalp
Although deep learning has made significant impact on image/video restoration and super-resolution, learned deinterlacing has so far received less attention in academia or industry. This is despite deinterlacing is well-suited for supervised learning from synthetic data since the degradation model is known and fixed. In this paper, we propose a novel multi-field full frame-rate deinterlacing network, which adapts the state-of-the-art superresolution approaches to the deinterlacing task. Our model aligns features from adjacent fields to a reference field (to be deinterlaced) using both deformable convolution residual blocks and self attention. Our extensive experimental results demonstrate that the proposed method provides state-of-the-art deinterlacing results in terms of both numerical and perceptual performance. At the time of writing, our model ranks first in the Full FrameRate LeaderBoard at https://videoprocessing.ai/benchmarks/deinterlacer.html
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Video | MSU Deinterlacer Benchmark | FPS on CPU | 0.1 | DfRes (SA) |
| Video | MSU Deinterlacer Benchmark | PSNR | 43.486 | DfRes (SA) |
| Video | MSU Deinterlacer Benchmark | SSIM | 0.972 | DfRes (SA) |
| Video | MSU Deinterlacer Benchmark | Subjective | 0.925 | DfRes (SA) |
| Video | MSU Deinterlacer Benchmark | VMAF | 95.96 | DfRes (SA) |
| Video | MSU Deinterlacer Benchmark | FPS on CPU | 0.4 | DfRes |
| Video | MSU Deinterlacer Benchmark | PSNR | 40.59 | DfRes |
| Video | MSU Deinterlacer Benchmark | SSIM | 0.971 | DfRes |
| Video | MSU Deinterlacer Benchmark | Subjective | 0.912 | DfRes |
| Video | MSU Deinterlacer Benchmark | VMAF | 95.2 | DfRes |
| Video | MSU Deinterlacer Benchmark | PSNR | 43.2 | DfRes (122000 G2e 3) |
| Video | MSU Deinterlacer Benchmark | SSIM | 0.972 | DfRes (122000 G2e 3) |
| Video | MSU Deinterlacer Benchmark | Subjective | 0.862 | DfRes (122000 G2e 3) |
| Video | MSU Deinterlacer Benchmark | VMAF | 95.68 | DfRes (122000 G2e 3) |