CVApr 18, 2025

DAM-Net: Domain Adaptation Network with Micro-Labeled Fine-Tuning for Change Detection

arXiv:2504.13748v1h-index: 18IEEE J Sel Top Appl Earth Obs Remote Sens
Originality Highly original
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This addresses the limitation of requiring extensive labeled data for retraining in cross-dataset change detection applications, offering a more efficient solution for practical use in remote sensing.

The paper tackles the problem of poor domain adaptability in change detection for remote sensing imagery, proposing DAM-Net with adversarial domain adaptation and micro-labeled fine-tuning to achieve comparable performance to semi-supervised methods using only 0.3% labeled samples instead of 10%.

Change detection (CD) in remote sensing imagery plays a crucial role in various applications such as urban planning, damage assessment, and resource management. While deep learning approaches have significantly advanced CD performance, current methods suffer from poor domain adaptability, requiring extensive labeled data for retraining when applied to new scenarios. This limitation severely restricts their practical applications across different datasets. In this work, we propose DAM-Net: a Domain Adaptation Network with Micro-Labeled Fine-Tuning for CD. Our network introduces adversarial domain adaptation to CD for, utilizing a specially designed segmentation-discriminator and alternating training strategy to enable effective transfer between domains. Additionally, we propose a novel Micro-Labeled Fine-Tuning approach that strategically selects and labels a minimal amount of samples (less than 1%) to enhance domain adaptation. The network incorporates a Multi-Temporal Transformer for feature fusion and optimized backbone structure based on previous research. Experiments conducted on the LEVIR-CD and WHU-CD datasets demonstrate that DAM-Net significantly outperforms existing domain adaptation methods, achieving comparable performance to semi-supervised approaches that require 10% labeled data while using only 0.3% labeled samples. Our approach significantly advances cross-dataset CD applications and provides a new paradigm for efficient domain adaptation in remote sensing. The source code of DAM-Net will be made publicly available upon publication.

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