Dual Contrastive Network for Few-Shot Remote Sensing Image Scene Classification
arXiv cs.CV / 3/25/2026
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Key Points
- The paper tackles few-shot remote sensing image scene classification, where limited labeled data and the remote-sensing characteristics cause small inter-class differences and large intra-class variations.
- It proposes a transfer-based Dual Contrastive Network (DCN) that uses two supervised contrastive learning branches: context-guided (CCL) to improve inter-class discriminability and detail-guided (DCL) to increase intra-class invariance.
- For CCL, the method introduces a Condenser Network to extract context features, then applies supervised contrastive learning on those features to learn more separable representations.
- For DCL, it introduces a Smelter Network to emphasize significant local details and performs supervised contrastive learning on detail feature maps to better use spatial information and focus on invariant details.
- Experiments on four public remote sensing benchmark datasets show competitive results for the proposed DCN approach.
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