Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

API: Empowering Generalizable Real-World Image Dehazing via Adaptive Patch Importance Learning

About

Real-world image dehazing is a fundamental yet challenging task in low-level vision. Existing learning-based methods often suffer from significant performance degradation when applied to complex real-world hazy scenes, primarily due to limited training data and the intrinsic complexity of haze density distributions.To address these challenges, we introduce a novel Adaptive Patch Importance-aware (API) framework for generalizable real-world image dehazing. Specifically, our framework consists of an Automatic Haze Generation (AHG) module and a Density-aware Haze Removal (DHR) module. AHG provides a hybrid data augmentation strategy by generating realistic and diverse hazy images as additional high-quality training data. DHR considers hazy regions with varying haze density distributions for generalizable real-world image dehazing in an adaptive patch importance-aware manner. To alleviate the ambiguity of the dehazed image details, we further introduce a new Multi-Negative Contrastive Dehazing (MNCD) loss, which fully utilizes information from multiple negative samples across both spatial and frequency domains. Extensive experiments demonstrate that our framework achieves state-of-the-art performance across multiple real-world benchmarks, delivering strong results in both quantitative metrics and qualitative visual quality, and exhibiting robust generalization across diverse haze distributions.

Chen Zhu, Huiwen Zhang, Yujie Li, Mu He, Xiaotian Qiao• 2026

Related benchmarks

TaskDatasetResultRank
Image DehazingDense-Haze (test)
SSIM72
47
Image DehazingO-Haze (test)
SSIM95.4
31
Image DehazingI-Haze (test)
SSIM0.934
23
Image DehazingNH-HAZE (test)
PSNR20.652
15
Showing 4 of 4 rows

Other info

Follow for update