Previous works have shown that convolutional neural networks can achieve good performance in image denoising tasks. However, limited by the local rigid convolutional operation, these methods lead to oversmoothing artifacts. A deeper network structure could alleviate these problems, but more computational overhead is needed. In this paper, we propose a novel spatial-adaptive denoising network (SADNet) for efficient single image blind noise removal. To adapt to changes in spatial textures and edges, we design a residual spatial-adaptive block. Deformable convolution is introduced to sample the spatially correlated features for weighting. An encoder-decoder structure with a context block is introduced to capture multiscale information. With noise removal from the coarse to fine, a high-quality noisefree image can be obtained. We apply our method to both synthetic and real noisy image datasets. The experimental results demonstrate that our method can surpass the state-of-the-art denoising methods both quantitatively and visually.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Denoising | SIDD | PSNR (sRGB) | 39.46 | SADNet |
| Denoising | SIDD | SSIM (sRGB) | 0.957 | SADNet |
| Denoising | DND | PSNR (sRGB) | 39.59 | SADNet |
| Denoising | DND | SSIM (sRGB) | 0.952 | SADNet |
| Image Denoising | SIDD | PSNR (sRGB) | 39.46 | SADNet |
| Image Denoising | SIDD | SSIM (sRGB) | 0.957 | SADNet |
| Image Denoising | DND | PSNR (sRGB) | 39.59 | SADNet |
| Image Denoising | DND | SSIM (sRGB) | 0.952 | SADNet |
| 3D Architecture | SIDD | PSNR (sRGB) | 39.46 | SADNet |
| 3D Architecture | SIDD | SSIM (sRGB) | 0.957 | SADNet |
| 3D Architecture | DND | PSNR (sRGB) | 39.59 | SADNet |
| 3D Architecture | DND | SSIM (sRGB) | 0.952 | SADNet |