Unbalanced Optimal Transport Dictionary Learning for Unsupervised Hyperspectral Image Clustering
arXiv cs.CV / 3/12/2026
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Key Points
- The paper proposes using unbalanced Wasserstein barycenters to learn a lower-dimensional representation for unsupervised hyperspectral image clustering, addressing robustness and class-balancing limitations of prior Wasserstein dictionary-learning approaches.
- It shows that unbalanced OT reduces the tendency to blur classes that arises from balancing spectral profiles and improves robustness to outliers and noise.
- By applying spectral clustering on the learned representation, the method yields effective unsupervised labeling and segmentation of hyperspectral scenes.
- This work advances unsupervised hyperspectral analysis and has potential implications for remote sensing and automated image segmentation tasks.
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