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.

Abstract

Nighttime image dehazing remains a challenging low-level vision problem due to the joint presence of haze, glow, non-uniform illumination, color distortion, and sensor noise, which often invalidate assumptions commonly used in daytime dehazing. To address these challenges, we propose HistoFusionNet, a transformer-enhanced architecture tailored for nighttime image dehazing by combining histogram-guided representation learning with frequency-adaptive feature refinement. Built upon a multi-scale encoder-decoder backbone, our method introduces histogram transformer blocks that model long-range dependencies by grouping features according to their dynamic-range characteristics, enabling more effective aggregation of similarly degraded regions under complex nighttime lighting. To further improve restoration fidelity, we incorporate a frequency-aware refinement branch that adaptively exploits complementary low- and high-frequency cues, helping recover scene structures, suppress artifacts, and enhance local details. This design yields a unified framework that is particularly well suited to the heterogeneous degradations encountered in real nighttime hazy scenes. Extensive experiments and highly competitive performance of our method on the NTIRE 2026 Nighttime Image Dehazing Challenge benchmark demonstrate the effectiveness of the proposed method. Our team ranked 1st among 22 participating teams, highlighting the robustness and competitive performance of HistoFusionNet. The code is available at: https://github.com/heydarimo/Night-Time-Dehazing