Unsupervised Neural Rendering for Image Hazing
Boyun Li, Yijie Lin, Xiao Liu, Peng Hu, Jiancheng Lv, Xi Peng

TL;DR
This paper introduces HazeGEN, an unsupervised neural rendering method for generating realistic hazy images from clean images, addressing transmission estimation and airlight adaptation without paired data.
Contribution
HazeGEN is the first deep neural network for unsupervised hazy image rendering that estimates transmission and airlight adaptively using novel priors.
Findings
Outperforms baseline methods in qualitative assessments.
Achieves accurate transmission map estimation without supervision.
Produces controllable and realistic hazy images.
Abstract
Image hazing aims to render a hazy image from a given clean one, which could be applied to a variety of practical applications such as gaming, filming, photographic filtering, and image dehazing. To generate plausible haze, we study two less-touched but challenging problems in hazy image rendering, namely, i) how to estimate the transmission map from a single image without auxiliary information, and ii) how to adaptively learn the airlight from exemplars, i.e., unpaired real hazy images. To this end, we propose a neural rendering method for image hazing, dubbed as HazeGEN. To be specific, HazeGEN is a knowledge-driven neural network which estimates the transmission map by leveraging a new prior, i.e., there exists the structure similarity (e.g., contour and luminance) between the transmission map and the input clean image. To adaptively learn the airlight, we build a neural module based…
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