HELM: Hierarchical and Explicit Label Modeling with Graph Learning for Multi-Label Image Classification
arXiv cs.CV / 3/13/2026
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Key Points
- HELM introduces a hierarchical and explicit label modeling framework for multi-label image classification that addresses complex label dependencies in remote sensing, including multi-path hierarchies and semi-supervised learning with unlabeled data.
- The method uses hierarchy-specific class tokens within a Vision Transformer to capture nuanced interactions among labels.
- A graph convolutional network explicitly encodes the hierarchical structure to generate hierarchy-aware embeddings.
- A self-supervised branch enables the model to exploit unlabeled imagery, improving performance in low-label scenarios.
- On four RSI datasets (UCM, AID, DFC-15, MLRSNet), HELM achieves state-of-the-art results in both supervised and semi-supervised settings, with particular strength when labels are scarce.
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