AI RESEARCH
ContraMap: Contrastive Uncertainty Mapping for Robot Environment Representation
arXiv CS.AI
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ArXi:2603.27632v1 Announce Type: cross Reliable robot perception requires not only predicting scene structure, but also identifying where predictions should be treated as unreliable due to sparse or missing observations. We present ContraMap, a contrastive continuous mapping method that augments kernel-based discriminative maps with an explicit uncertainty class trained using synthetic noise samples. This formulation treats unobserved regions as a contrastive class, enabling joint environment prediction and spatial uncertainty estimation in real time without Bayesian inference.