Rethinking Performance Gains in Image Dehazing Networks

23 Sep 2022  ·  Yuda Song, Yang Zhou, Hui Qian, Xin Du ·

Image dehazing is an active topic in low-level vision, and many image dehazing networks have been proposed with the rapid development of deep learning. Although these networks' pipelines work fine, the key mechanism to improving image dehazing performance remains unclear. For this reason, we do not target to propose a dehazing network with fancy modules; rather, we make minimal modifications to popular U-Net to obtain a compact dehazing network. Specifically, we swap out the convolutional blocks in U-Net for residual blocks with the gating mechanism, fuse the feature maps of main paths and skip connections using the selective kernel, and call the resulting U-Net variant gUNet. As a result, with a significantly reduced overhead, gUNet is superior to state-of-the-art methods on multiple image dehazing datasets. Finally, we verify these key designs to the performance gain of image dehazing networks through extensive ablation studies.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Image Dehazing Haze4k gUNet-D PSNR 33.52 # 4
SSIM 0.988 # 4
Image Dehazing RS-Haze gUNet-D PSNR 39.7 # 2
SSIM 0.971 # 1
Image Dehazing SOTS Indoor gUNet-D PSNR 41.34 # 6
SSIM 0.996 # 5
Image Dehazing SOTS Outdoor gUNet-D PSNR 36.64 # 10
SSIM 0.986 # 11

Methods