1. A Comprehensive Review of Traditional and Deep-Learning-Based Defogging Algorithms.
- Author
-
Shen, Minxian, Lv, Tianyi, Liu, Yi, Zhang, Jialiang, and Ju, Mingye
- Subjects
MACHINE learning ,COMPUTER vision ,IMAGE intensifiers ,DATA mining ,ATMOSPHERIC models ,DEEP learning - Abstract
Images captured under adverse weather conditions often suffer from blurred textures and muted colors, which can impair the extraction of reliable information. Image defogging has emerged as a critical solution in computer vision to enhance the visual quality of such foggy images. However, there remains a lack of comprehensive studies that consolidate both traditional algorithm-based and deep learning-based defogging techniques. This paper presents a comprehensive survey of the currently proposed defogging techniques. Specifically, we first provide a fundamental classification of defogging methods: traditional techniques (including image enhancement approaches and physical-model-based defogging) and deep learning algorithms (such as network-based models and training strategy-based models). We then delve into a detailed discussion of each classification, introducing several representative image fog removal methods. Finally, we summarize their underlying principles, advantages, disadvantages, and give the prospects for future development. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF