Jiwon Kim, Jung Kwon Lee, Kyoung Mu Lee
We propose an image super-resolution method (SR) using a deeply-recursive convolutional network (DRCN). Our network has a very deep recursive layer (up to 16 recursions). Increasing recursion depth can improve performance without introducing new parameters for additional convolutions. Albeit advantages, learning a DRCN is very hard with a standard gradient descent method due to exploding/vanishing gradients. To ease the difficulty of training, we propose two extensions: recursive-supervision and skip-connection. Our method outperforms previous methods by a large margin.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Super-Resolution | BSD100 - 2x upscaling | PSNR | 31.85 | DRCN [[Kim et al.2016b]] |
| Super-Resolution | Set14 - 2x upscaling | PSNR | 33.04 | DRCN [[Kim et al.2016b]] |
| Super-Resolution | Set14 - 4x upscaling | MOS | 2.84 | DRCN |
| Super-Resolution | Set14 - 4x upscaling | PSNR | 28.02 | DRCN |
| Super-Resolution | Set14 - 4x upscaling | SSIM | 0.8074 | DRCN |
| Super-Resolution | Urban100 - 2x upscaling | PSNR | 30.75 | DRCN [[Kim et al.2016b]] |
| Super-Resolution | Set5 - 2x upscaling | PSNR | 37.63 | DRCN [[Kim et al.2016b]] |
| Super-Resolution | BSD100 - 4x upscaling | MOS | 2.12 | DRCN |
| Super-Resolution | BSD100 - 4x upscaling | PSNR | 27.21 | DRCN |
| Super-Resolution | BSD100 - 4x upscaling | SSIM | 0.7493 | DRCN |
| Image Super-Resolution | BSD100 - 2x upscaling | PSNR | 31.85 | DRCN [[Kim et al.2016b]] |
| Image Super-Resolution | Set14 - 2x upscaling | PSNR | 33.04 | DRCN [[Kim et al.2016b]] |
| Image Super-Resolution | Set14 - 4x upscaling | MOS | 2.84 | DRCN |
| Image Super-Resolution | Set14 - 4x upscaling | PSNR | 28.02 | DRCN |
| Image Super-Resolution | Set14 - 4x upscaling | SSIM | 0.8074 | DRCN |
| Image Super-Resolution | Urban100 - 2x upscaling | PSNR | 30.75 | DRCN [[Kim et al.2016b]] |
| Image Super-Resolution | Set5 - 2x upscaling | PSNR | 37.63 | DRCN [[Kim et al.2016b]] |
| Image Super-Resolution | BSD100 - 4x upscaling | MOS | 2.12 | DRCN |
| Image Super-Resolution | BSD100 - 4x upscaling | PSNR | 27.21 | DRCN |
| Image Super-Resolution | BSD100 - 4x upscaling | SSIM | 0.7493 | DRCN |
| 3D Object Super-Resolution | BSD100 - 2x upscaling | PSNR | 31.85 | DRCN [[Kim et al.2016b]] |
| 3D Object Super-Resolution | Set14 - 2x upscaling | PSNR | 33.04 | DRCN [[Kim et al.2016b]] |
| 3D Object Super-Resolution | Set14 - 4x upscaling | MOS | 2.84 | DRCN |
| 3D Object Super-Resolution | Set14 - 4x upscaling | PSNR | 28.02 | DRCN |
| 3D Object Super-Resolution | Set14 - 4x upscaling | SSIM | 0.8074 | DRCN |
| 3D Object Super-Resolution | Urban100 - 2x upscaling | PSNR | 30.75 | DRCN [[Kim et al.2016b]] |
| 3D Object Super-Resolution | Set5 - 2x upscaling | PSNR | 37.63 | DRCN [[Kim et al.2016b]] |
| 3D Object Super-Resolution | BSD100 - 4x upscaling | MOS | 2.12 | DRCN |
| 3D Object Super-Resolution | BSD100 - 4x upscaling | PSNR | 27.21 | DRCN |
| 3D Object Super-Resolution | BSD100 - 4x upscaling | SSIM | 0.7493 | DRCN |
| 16k | BSD100 - 2x upscaling | PSNR | 31.85 | DRCN [[Kim et al.2016b]] |
| 16k | Set14 - 2x upscaling | PSNR | 33.04 | DRCN [[Kim et al.2016b]] |
| 16k | Set14 - 4x upscaling | MOS | 2.84 | DRCN |
| 16k | Set14 - 4x upscaling | PSNR | 28.02 | DRCN |
| 16k | Set14 - 4x upscaling | SSIM | 0.8074 | DRCN |
| 16k | Urban100 - 2x upscaling | PSNR | 30.75 | DRCN [[Kim et al.2016b]] |
| 16k | Set5 - 2x upscaling | PSNR | 37.63 | DRCN [[Kim et al.2016b]] |
| 16k | BSD100 - 4x upscaling | MOS | 2.12 | DRCN |
| 16k | BSD100 - 4x upscaling | PSNR | 27.21 | DRCN |
| 16k | BSD100 - 4x upscaling | SSIM | 0.7493 | DRCN |