Transmittance-Guided Structure-Texture Decomposition for Nighttime Image Dehazing
Francesco Moretti, Giulia Bianchi, Andrea Gallo

TL;DR
This paper introduces a comprehensive two-stage nighttime image dehazing method that combines transmittance correction with structure-texture separation, significantly improving visibility and color accuracy in hazy nighttime images.
Contribution
It proposes a novel transmittance correction technique and a STAR-YUV decomposition model for effective joint enhancement of nighttime hazy images.
Findings
Enhanced visibility and color fidelity in nighttime hazy images.
Effective suppression of glow and non-uniform illumination effects.
Improved image clarity through layered optimization and fusion strategies.
Abstract
Nighttime images captured under hazy conditions suffer from severe quality degradation, including low visibility, color distortion, and reduced contrast, caused by the combined effects of atmospheric scattering, absorption by suspended particles, and non-uniform illumination from artificial light sources. While existing nighttime dehazing methods have achieved partial success, they typically address only a subset of these issues, such as glow suppression or brightness enhancement, without jointly tackling the full spectrum of degradation factors. In this paper, we propose a two-stage nighttime image dehazing framework that integrates transmittance correction with structure-texture layered optimization. In the first stage, we introduce a novel transmittance correction method that establishes boundary-constrained initial transmittance maps and subsequently applies region-adaptive…
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