AI RESEARCH
Rare-Aware Autoencoding: Reconstructing Spatially Imbalanced Data
arXiv CS.CV
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ArXi:2604.02031v1 Announce Type: new Autoencoders can be challenged by spatially non-uniform sampling of image content. This is common in medical imaging, biology, and physics, where informative patterns occur rarely at specific image coordinates, as background dominates these locations in most samples, biasing reconstructions toward the majority appearance. In practice, autoencoders are biased toward dominant patterns resulting in the loss of fine-grained detail and causing blurred reconstructions for rare spatial inputs especially under spatial data imbalance.