Semantic Foggy Scene Understanding with Synthetic Data
Christos Sakaridis, Dengxin Dai, Luc Van Gool

TL;DR
This paper introduces a synthetic fog generation pipeline for real images, enhancing semantic scene understanding in foggy conditions using CNNs, semi-supervised learning, and dehazing techniques, validated on new datasets.
Contribution
It presents a novel fog synthesis method, a semi-supervised learning approach for SFSU, and evaluates the impact of dehazing, advancing foggy scene understanding with synthetic data.
Findings
Synthetic fog improves SFSU performance significantly.
Semi-supervised learning further enhances accuracy.
Dehazing offers marginal benefits for SFSU.
Abstract
This work addresses the problem of semantic foggy scene understanding (SFSU). Although extensive research has been performed on image dehazing and on semantic scene understanding with clear-weather images, little attention has been paid to SFSU. Due to the difficulty of collecting and annotating foggy images, we choose to generate synthetic fog on real images that depict clear-weather outdoor scenes, and then leverage these partially synthetic data for SFSU by employing state-of-the-art convolutional neural networks (CNN). In particular, a complete pipeline to add synthetic fog to real, clear-weather images using incomplete depth information is developed. We apply our fog synthesis on the Cityscapes dataset and generate Foggy Cityscapes with 20550 images. SFSU is tackled in two ways: 1) with typical supervised learning, and 2) with a novel type of semi-supervised learning, which…
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