Multi-Scale Boosted Dehazing Network with Dense Feature Fusion
About
In this paper, we propose a Multi-Scale Boosted Dehazing Network with Dense Feature Fusion based on the U-Net architecture. The proposed method is designed based on two principles, boosting and error feedback, and we show that they are suitable for the dehazing problem. By incorporating the Strengthen-Operate-Subtract boosting strategy in the decoder of the proposed model, we develop a simple yet effective boosted decoder to progressively restore the haze-free image. To address the issue of preserving spatial information in the U-Net architecture, we design a dense feature fusion module using the back-projection feedback scheme. We show that the dense feature fusion module can simultaneously remedy the missing spatial information from high-resolution features and exploit the non-adjacent features. Extensive evaluations demonstrate that the proposed model performs favorably against the state-of-the-art approaches on the benchmark datasets as well as real-world hazy images.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Dehazing | SOTS (test) | PSNR24.15 | 161 | |
| Image Dehazing | SOTS Outdoor | PSNR34.81 | 112 | |
| Image Dehazing | SOTS | PSNR33.79 | 95 | |
| Image Dehazing | SOTS Indoor RESIDE | PSNR33.67 | 72 | |
| Image Dehazing | SOTS Outdoor (test) | PSNR34.81 | 69 | |
| Image Dehazing | SOTS indoor (test) | PSNR33.79 | 69 | |
| Image Dehazing | SOTS Indoor | PSNR33.67 | 62 | |
| Image Dehazing | Haze4k (test) | PSNR22.99 | 57 | |
| Image Dehazing | Dense-Haze (test) | SSIM69.5 | 47 | |
| Image Dehazing | Dense-Haze | PSNR15.37 | 42 |