Exchange means change: an unsupervised single-temporal change detection framework based on intra- and inter-image patch exchange
Hongruixuan Chen, Jian Song, Chen Wu, Bo Du, Naoto Yokoya

TL;DR
This paper introduces an unsupervised framework for change detection in remote sensing images that uses patch exchange techniques to generate training data from single images, reducing the need for labeled paired datasets.
Contribution
The proposed I3PE framework enables training deep change detectors using only unpaired, unlabeled single-temporal images through intra- and inter-image patch exchange methods.
Findings
Outperforms existing unsupervised methods in large-scale datasets
Achieves significant F1 score improvements over state-of-the-art
Effective in simulating real-world radiometric differences
Abstract
Change detection (CD) is a critical task in studying the dynamics of ecosystems and human activities using multi-temporal remote sensing images. While deep learning has shown promising results in CD tasks, it requires a large number of labeled and paired multi-temporal images to achieve high performance. Pairing and annotating large-scale multi-temporal remote sensing images is both expensive and time-consuming. To make deep learning-based CD techniques more practical and cost-effective, we propose an unsupervised single-temporal CD framework based on intra- and inter-image patch exchange (I3PE). The I3PE framework allows for training deep change detectors on unpaired and unlabeled single-temporal remote sensing images that are readily available in real-world applications. The I3PE framework comprises four steps: 1) intra-image patch exchange method is based on an object-based image…
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Taxonomy
TopicsRemote-Sensing Image Classification · Advanced Image Fusion Techniques
