TL;DR
This paper introduces GeoKR, a geographical knowledge-driven pre-training method for remote sensing images that leverages land cover data to improve model performance and reduce annotation needs.
Contribution
It proposes a novel pre-training framework using geographical knowledge and introduces a large-scale dataset Levir-KR for remote sensing image analysis.
Findings
Outperforms ImageNet pre-training and self-supervised methods
Reduces annotation requirements for downstream tasks
Enhances performance in scene classification, segmentation, and detection
Abstract
The proliferation of remote sensing satellites has resulted in a massive amount of remote sensing images. However, due to human and material resource constraints, the vast majority of remote sensing images remain unlabeled. As a result, it cannot be applied to currently available deep learning methods. To fully utilize the remaining unlabeled images, we propose a Geographical Knowledge-driven Representation learning method for remote sensing images (GeoKR), improving network performance and reduce the demand for annotated data. The global land cover products and geographical location associated with each remote sensing image are regarded as geographical knowledge to provide supervision for representation learning and network pre-training. An efficient pre-training framework is proposed to eliminate the supervision noises caused by imaging times and resolutions difference between remote…
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