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Real-world Image Dehazing with Coherence-based Pseudo Labeling and Cooperative Unfolding Network

About

Real-world Image Dehazing (RID) aims to alleviate haze-induced degradation in real-world settings. This task remains challenging due to the complexities in accurately modeling real haze distributions and the scarcity of paired real-world data. To address these challenges, we first introduce a cooperative unfolding network that jointly models atmospheric scattering and image scenes, effectively integrating physical knowledge into deep networks to restore haze-contaminated details. Additionally, we propose the first RID-oriented iterative mean-teacher framework, termed the Coherence-based Label Generator, to generate high-quality pseudo labels for network training. Specifically, we provide an optimal label pool to store the best pseudo-labels during network training, leveraging both global and local coherence to select high-quality candidates and assign weights to prioritize haze-free regions. We verify the effectiveness of our method, with experiments demonstrating that it achieves state-of-the-art performance on RID tasks. Code will be available at https://github.com/cnyvfang/CORUN-Colabator.

Chengyu Fang, Chunming He, Fengyang Xiao, Yulun Zhang, Longxiang Tang, Yuelin Zhang, Kai Li, Xiu Li• 2024

Related benchmarks

TaskDatasetResultRank
Image DehazingDense-Haze (test)
SSIM49.4
47
Nighttime DehazingNHR (test)
PSNR24.997
38
Nighttime Image DehazingNHM
SSIM0.924
32
Nighttime Image DehazingNHCD
SSIM0.924
32
Nighttime Image DehazingNHCM
SSIM91.3
32
Nighttime Image DehazingUNREAL-NH
SSIM0.711
32
Nighttime Image DehazingNHCL
SSIM90.8
32
Image DehazingO-Haze (test)
SSIM68.4
31
Image DehazingI-Haze (test)
SSIM0.764
23
Image DehazingNH-HAZE (test)
PSNR12.184
15
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