Remote sensing image change detection using deep learning techniques: a comprehensive survey

深度学习 变更检测 计算机科学 遥感 人工智能 领域(数学) 合成孔径雷达 高光谱成像 光学(聚焦) 图像(数学) 上下文图像分类 目标检测 数据科学 机器学习 遥感应用 雷达成像 航空影像 图像处理 数据类型 地球观测 数据挖掘 数据收集
作者
Tao Lei,Shuxin Zhang,Shaoxiong Lin,Tongfei Liu,Zhiyong Lv,Tao Gao,Maoguo Gong,Asoke K. Nandi
出处
期刊:Artificial Intelligence Review [Springer Science+Business Media]
卷期号:59 (3) 被引量:3
标识
DOI:10.1007/s10462-026-11501-0
摘要

Abstract In recent years, deep learning algorithms have been widely regarded as the preferred method for remote sensing image analysis and have been successfully applied in the field of change detection. However, currently only a few comprehensive review papers on deep learning based remote sensing image change detection methods are available. To address the above issues, this study provides the current research status and development trends of remote sensing image change detection and analysis based on deep learning. Firstly, considering the differences in data volume and in data characteristics between different data sources, unlike previous reviews that only focus on the change detection problem of a certain type of remote sensing data, this review outlines the various data types involved in remote sensing image change detection, mainly including very high-resolution data, hyperspectral data, synthetic aperture radar data, and heterogeneous data. Secondly, unlike previous reviews that only introduce deep learning methods as a category of methods, this review comprehensively summarizes the research progress in remote sensing image change detection from three aspects: supervised deep learning, semi-supervised deep learning, and unsupervised deep learning, and explores the advantages and limitations of these methods. On this basis, we also propose five interesting research directions to promote further development in this field, including data privacy protection, multi-modality semantic-level change detection, lightweight models, change detection assisted by foundational models, as well as brain-inspired and vision-language models for change detection. This study will help deepen our understanding of deep learning in change detection in multiple ways and lay the foundation for future research.
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