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Prior-guided Hierarchical Harmonization Network for Efficient Image Dehazing

3 March 2025
Xiongfei Su
Siyuan Li
Yuning Cui
Miao Cao
Y. Zhang
Z. Chen
Zongliang Wu
Z. Wang
Y. Zhang
Xin Yuan
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Abstract

Image dehazing is a crucial task that involves the enhancement of degraded images to recover their sharpness and textures. While vision Transformers have exhibited impressive results in diverse dehazing tasks, their quadratic complexity and lack of dehazing priors pose significant drawbacks for real-world applications.In this paper, guided by triple priors, Bright Channel Prior (BCP), Dark Channel Prior (DCP), and Histogram Equalization (HE), we propose a \textit{P}rior-\textit{g}uided Hierarchical \textit{H}armonization Network (PGH2^22Net) for image dehazing. PGH2^22Net is built upon the UNet-like architecture with an efficient encoder and decoder, consisting of two module types: (1) Prior aggregation module that injects B/DCP and selects diverse contexts with gating attention. (2) Feature harmonization modules that subtract low-frequency components from spatial and channel aspects and learn more informative feature distributions to equalize the feature maps.

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@article{su2025_2503.01136,
  title={ Prior-guided Hierarchical Harmonization Network for Efficient Image Dehazing },
  author={ Xiongfei Su and Siyuan Li and Yuning Cui and Miao Cao and Yulun Zhang and Zheng Chen and Zongliang Wu and Zedong Wang and Yuanlong Zhang and Xin Yuan },
  journal={arXiv preprint arXiv:2503.01136},
  year={ 2025 }
}
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