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SimHaze: game engine simulated data for real-world dehazing

Authors :
Lou, Zhengyang
Xu, Huan
Mu, Fangzhou
Liu, Yanli
Zhang, Xiaoyu
Shang, Liang
Li, Jiang
Guan, Bochen
Li, Yin
Hu, Yu Hen
Publication Year :
2023

Abstract

Deep models have demonstrated recent success in single-image dehazing. Most prior methods consider fully supervised training and learn from paired clean and hazy images, where a hazy image is synthesized based on a clean image and its estimated depth map. This paradigm, however, can produce low-quality hazy images due to inaccurate depth estimation, resulting in poor generalization of the trained models. In this paper, we explore an alternative approach for generating paired clean-hazy images by leveraging computer graphics. Using a modern game engine, our approach renders crisp clean images and their precise depth maps, based on which high-quality hazy images can be synthesized for training dehazing models. To this end, we present SimHaze: a new synthetic haze dataset. More importantly, we show that training with SimHaze alone allows the latest dehazing models to achieve significantly better performance in comparison to previous dehazing datasets. Our dataset and code will be made publicly available.<br />Comment: Submitted to ICIP 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.16481
Document Type :
Working Paper