Dongdong Chen, Mingming He, Qingnan Fan, Jing Liao, Liheng Zhang, Dongdong Hou, Lu Yuan, Gang Hua
Image dehazing aims to recover the uncorrupted content from a hazy image. Instead of leveraging traditional low-level or handcrafted image priors as the restoration constraints, e.g., dark channels and increased contrast, we propose an end-to-end gated context aggregation network to directly restore the final haze-free image. In this network, we adopt the latest smoothed dilation technique to help remove the gridding artifacts caused by the widely-used dilated convolution with negligible extra parameters, and leverage a gated sub-network to fuse the features from different levels. Extensive experiments demonstrate that our method can surpass previous state-of-the-art methods by a large margin both quantitatively and qualitatively. In addition, to demonstrate the generality of the proposed method, we further apply it to the image deraining task, which also achieves the state-of-the-art performance. Code has been made available at https://github.com/cddlyf/GCANet.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Rain Removal | DID-MDN | PSNR | 31.68 | GCANet |
| Dehazing | SOTS Indoor | PSNR | 30.23 | GCANet |
| Dehazing | SOTS Indoor | SSIM | 0.98 | GCANet |
| Dehazing | RS-Haze | PSNR | 34.41 | GCANet |
| Dehazing | RS-Haze | SSIM | 0.949 | GCANet |
| Image Dehazing | SOTS Indoor | PSNR | 30.23 | GCANet |
| Image Dehazing | SOTS Indoor | SSIM | 0.98 | GCANet |
| Image Dehazing | RS-Haze | PSNR | 34.41 | GCANet |
| Image Dehazing | RS-Haze | SSIM | 0.949 | GCANet |