Perspective from a Higher Dimension: Can 3D Geometric Priors Help Visual Floorplan Localization?
- URL: http://arxiv.org/abs/2507.18881v1
- Date: Fri, 25 Jul 2025 01:34:26 GMT
- Title: Perspective from a Higher Dimension: Can 3D Geometric Priors Help Visual Floorplan Localization?
- Authors: Bolei Chen, Jiaxu Kang, Haonan Yang, Ping Zhong, Jianxin Wang,
- Abstract summary: Self-localization of building's floorplans has attracted researchers' interest.<n>Since floorplans are minimalist representations of a building's structure, modal and geometric differences between visual perceptions and floorplans pose challenges to this task.<n>Existing methods cleverly utilize 2D geometric features and pose filters to achieve promising performance.<n>This paper views the 2D Floorplan localization problem from a higher dimension by injecting 3D geometric priors into the visual FLoc algorithm.
- Score: 8.82283453148819
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Since a building's floorplans are easily accessible, consistent over time, and inherently robust to changes in visual appearance, self-localization within the floorplan has attracted researchers' interest. However, since floorplans are minimalist representations of a building's structure, modal and geometric differences between visual perceptions and floorplans pose challenges to this task. While existing methods cleverly utilize 2D geometric features and pose filters to achieve promising performance, they fail to address the localization errors caused by frequent visual changes and view occlusions due to variously shaped 3D objects. To tackle these issues, this paper views the 2D Floorplan Localization (FLoc) problem from a higher dimension by injecting 3D geometric priors into the visual FLoc algorithm. For the 3D geometric prior modeling, we first model geometrically aware view invariance using multi-view constraints, i.e., leveraging imaging geometric principles to provide matching constraints between multiple images that see the same points. Then, we further model the view-scene aligned geometric priors, enhancing the cross-modal geometry-color correspondences by associating the scene's surface reconstruction with the RGB frames of the sequence. Both 3D priors are modeled through self-supervised contrastive learning, thus no additional geometric or semantic annotations are required. These 3D priors summarized in extensive realistic scenes bridge the modal gap while improving localization success without increasing the computational burden on the FLoc algorithm. Sufficient comparative studies demonstrate that our method significantly outperforms state-of-the-art methods and substantially boosts the FLoc accuracy. All data and code will be released after the anonymous review.
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