Large-scale Foundation Model enhanced Few-shot Learning for Open-pit Minefield Extraction

Mengmeng Shao,Kaiyuan Li, Yi Wen, Xiao Xie

IEEE Geoscience and Remote Sensing Letters(2024)

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摘要
High-resolution remote sensing data enables the extraction of fine-detailed boundaries of open-pit minefields, which is crucial for various applications such as ecological restoration, environment impact assessment, mining field disaster minoring, etc. In the last decade, a variety of convolutional neural networks (CNNs) and vision transformers (ViT) approaches have been developed for extracting the boundary and coverage of open-pit minefields. However, these deep learning approaches are always computationally expensive in pretraining and fine-tuning the network parameters. In addition, the diverse land cover/land use of different open-pit minefields poses a big challenge in building a large-scale benchmark dataset. To conduct efficient open-pit minefield extraction with limited labelled data, this paper employs a large-scale foundation model called Segment Anything (SAM) to develop the few-shot learning strategy for extracting open-pit minefield with slightly fine-tuning SAM and without fine-tuning SAM, respectively. The experiment demonstrates that the proposed SAM-enhanced few-shot learning outperforms pretraining the-state-of-the-art semantic segmentation approaches in terms of extraction precision and time cost. We hope our work can provide a solution for complex open-pit minefield extraction with a small number of labelled datasets.
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关键词
large-scale foundation model,few-shot learning,open-pit minefield extraction,remote sensing
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