PHATNet: A Physics-Guided Haze Transfer Network for Domain-Adaptive Real-World Image Dehazing

Abstract

Image dehazing aims to remove unwanted hazy artifacts in images. Although previous research has collected paired real-world hazy and haze-free images to improve dehazing models' performance in real-world scenarios, these models often experience significant performance drops when handling unseen real-world hazy images due to limited training data. This issue motivates us to develop a flexible domain adaptation method to enhance dehazing performance during testing. Observing that predicting haze patterns is generally easier than recovering clean content, we propose the Physics-guided Haze Transfer Network (PHATNet) which transfers haze patterns from unseen target domains to source-domain haze-free images, creating domain-specific fine-tuning sets to update dehazing models for effective domain adaptation. Additionally, we introduce a Haze-Transfer-Consistency loss and a Content-Leakage Loss to enhance PHATNet's disentanglement ability. Experimental results demonstrate that PHATNet significantly boosts state-of-the-art dehazing models on benchmark real-world image dehazing datasets.

Cite

Text

Tsai et al. "PHATNet: A Physics-Guided Haze Transfer Network for Domain-Adaptive Real-World Image Dehazing." International Conference on Computer Vision, 2025.

Markdown

[Tsai et al. "PHATNet: A Physics-Guided Haze Transfer Network for Domain-Adaptive Real-World Image Dehazing." International Conference on Computer Vision, 2025.](https://mlanthology.org/iccv/2025/tsai2025iccv-phatnet/)

BibTeX

@inproceedings{tsai2025iccv-phatnet,
  title     = {{PHATNet: A Physics-Guided Haze Transfer Network for Domain-Adaptive Real-World Image Dehazing}},
  author    = {Tsai, Fu-Jen and Peng, Yan-Tsung and Lin, Yen-Yu and Lin, Chia-Wen},
  booktitle = {International Conference on Computer Vision},
  year      = {2025},
  pages     = {5591-5600},
  url       = {https://mlanthology.org/iccv/2025/tsai2025iccv-phatnet/}
}