CVAILGMay 21

SceneAligner: 3D-Grounded Floorplan Localization in the Wild

arXiv:2605.2258121.4
Predicted impact top 24% in CV · last 90 daysOriginality Highly original
AI Analysis

This work addresses the practical need for robust floorplan localization in public buildings, overcoming limitations of existing methods that assume controlled environments and precise vectorized floorplans.

SceneAligner tackles floorplan localization in large-scale, real-world settings using rasterized floorplans, achieving substantial improvements over prior methods and operating with as few as a single input image.

Many public buildings provide floorplans with a "you are here" indicator to help visitors orient themselves. Floorplan localization seeks to computationally replicate this capability by determining where visual observations were captured within a floorplan. However, existing methods typically assume controlled small-scale environments and precise vectorized floorplans, limiting their ability to operate in large-scale buildings and rasterized floorplans. In this work, we present an approach for performing floorplan localization in the wild by grounding the task in a reconstructed 3D representation of the scene. Given an unconstrained image collection, our method reconstructs a gravity-aligned 3D scene and projects it into a 2D density map that serves as a floorplan proxy. Floorplan localization is then formulated as aligning this proxy with the input floorplan via a 2D similarity transform. To bridge the appearance gap between density maps and architectural floorplans, we adapt a 2D foundation model to learn cross-modal correspondences, introducing a fine-tuning scheme that encourages semantically aligned matches while preserving structural consistency. Extensive experiments demonstrate substantial improvements over prior methods, including in extremely sparse settings with as little as a single input image. Our code and data will be publicly available.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes