Remote Sensing Image Dehazing: A Systematic Review of Progress, Challenges, and Prospects
Heng Zhou, Xiaoxiong Liu, Zhenxi Zhang, Jieheng Yun, Chengyang Li, Yunchu Yang, Dongyi Xia, Chunna Tian, Xiao-Jun Wu

TL;DR
This paper provides a comprehensive survey of remote sensing image dehazing methods, evaluates their performance on multiple datasets, and discusses future challenges and directions for developing trustworthy and efficient dehazing systems.
Contribution
It offers the first systematic review of RSI dehazing, categorizes approaches into three stages, and provides extensive empirical benchmarking and analysis of recent models.
Findings
Transformer- and diffusion-based models improve SSIM by 12-18%.
Hybrid physics-guided models achieve higher radiometric stability.
Models with explicit transmission or airlight constraints reduce color bias by up to 27%.
Abstract
Remote sensing images (RSIs) are frequently degraded by haze, fog, and thin clouds, which obscure surface reflectance and hinder downstream applications. This study presents the first systematic and unified survey of RSIs dehazing, integrating methodological evolution, benchmark assessment, and physical consistency analysis. We categorize existing approaches into a three-stage progression: from handcrafted physical priors, to data-driven deep restoration, and finally to hybrid physical-intelligent generation, and summarize more than 30 representative methods across CNNs, GANs, Transformers, and diffusion models. To provide a reliable empirical reference, we conduct large-scale quantitative experiments on five public datasets using 12 metrics, including PSNR, SSIM, CIEDE, LPIPS, FID, SAM, ERGAS, UIQI, QNR, NIQE, and HIST. Cross-domain comparison reveals that recent Transformer- and…
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Taxonomy
TopicsImage Enhancement Techniques · Advanced Image Fusion Techniques · Flood Risk Assessment and Management
