A Data-Centric Solution to NonHomogeneous Dehazing via Vision Transformer
Yangyi Liu, Huan Liu, Liangyan Li, Zijun Wu, Jun Chen

TL;DR
This paper introduces a data-centric approach using RGB-channel transformations and vision transformers to improve non-homogeneous image dehazing, addressing dataset limitations and distribution gaps.
Contribution
It proposes a novel network architecture combined with data preprocessing techniques to enhance dehazing performance on non-homogeneous haze images.
Findings
Effective reduction of distribution gaps between datasets.
Significant improvement over existing methods on NH-HAZE23.
Validated through extensive experiments and ablation studies.
Abstract
Recent years have witnessed an increased interest in image dehazing. Many deep learning methods have been proposed to tackle this challenge, and have made significant accomplishments dealing with homogeneous haze. However, these solutions cannot maintain comparable performance when they are applied to images with non-homogeneous haze, e.g., NH-HAZE23 dataset introduced by NTIRE challenges. One of the reasons for such failures is that non-homogeneous haze does not obey one of the assumptions that is required for modeling homogeneous haze. In addition, a large number of pairs of non-homogeneous hazy image and the clean counterpart is required using traditional end-to-end training approaches, while NH-HAZE23 dataset is of limited quantities. Although it is possible to augment the NH-HAZE23 dataset by leveraging other non-homogeneous dehazing datasets, we observe that it is necessary to…
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Taxonomy
TopicsImage Enhancement Techniques · Video Surveillance and Tracking Methods · Advanced Neural Network Applications
