HistoFusionNet: Histogram-Guided Fusion and Frequency-Adaptive Refinement for Nighttime Image Dehazing
arXiv cs.CV / 4/7/2026
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Key Points
- The paper proposes HistoFusionNet, a transformer-enhanced approach specifically designed for nighttime image dehazing where daytime assumptions fail due to haze, glow, non-uniform illumination, color distortion, and sensor noise.
- It introduces histogram-guided representation learning by grouping features based on dynamic-range characteristics to better aggregate similarly degraded regions and capture long-range dependencies.
- A frequency-adaptive refinement branch leverages complementary low- and high-frequency cues to recover structures, suppress artifacts, and enhance local details.
- Experiments on the NTIRE 2026 Nighttime Image Dehazing Challenge benchmark report highly competitive results, with the team ranking 1st out of 22 teams.
- The authors provide an open-source implementation via the linked GitHub repository, enabling reproduction and further experimentation.
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