A Survey of Sample-Efficient Deep Learning for Change Detection in Remote Sensing: Tasks, Strategies, and Challenges
Lei Ding, Danfeng Hong, Maofan Zhao, Hongruixuan Chen, Chenyu Li, Jie, Deng, Naoto Yokoya, Lorenzo Bruzzone, Jocelyn Chanussot

TL;DR
This survey reviews deep learning methods for change detection in remote sensing, focusing on challenges like limited training data and recent advances such as self-supervision and foundation models.
Contribution
It summarizes existing change detection techniques, strategies for training with limited samples, and discusses recent advancements to guide future research.
Findings
Overview of various change detection tasks and methods
Discussion on strategies for training with limited data
Analysis of recent advancements like self-supervision and foundation models
Abstract
In the last decade, the rapid development of deep learning (DL) has made it possible to perform automatic, accurate, and robust Change Detection (CD) on large volumes of Remote Sensing Images (RSIs). However, despite advances in CD methods, their practical application in real-world contexts remains limited due to the diverse input data and the applicational context. For example, the collected RSIs can be time-series observations, and more informative results are required to indicate the time of change or the specific change category. Moreover, training a Deep Neural Network (DNN) requires a massive amount of training samples, whereas in many cases these samples are difficult to collect. To address these challenges, various specific CD methods have been developed considering different application scenarios and training resources. Additionally, recent advancements in image generation,…
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