FlatLands: Generative Floormap Completion From a Single Egocentric View
arXiv cs.CV / 3/18/2026
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Key Points
- FlatLands introduces a dataset and benchmark for single-view BEV floor completion, aggregating 270,575 observations from 17,656 real indoor scenes with aligned observations, visibility, validity, and ground-truth BEV maps.
- The benchmark provides both in- and out-of-distribution evaluation protocols and benchmarks a range of modeling approaches from training-free methods to deterministic models, ensembles, and stochastic generative models.
- The work demonstrates an end-to-end monocular RGB-to-floormaps pipeline, enabling uncertainty-aware indoor mapping for embodied navigation.
- FlatLands establishes a rigorous testbed for uncertainty-aware indoor mapping and generative completion, with potential impact on navigation systems operating under perceptual uncertainty.
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