Visible Structure Retrieval for Lightweight Image-Based Relocalisation
By: Fereidoon Zangeneh , Leonard Bruns , Amit Dekel and more
Potential Business Impact:
Finds your location in a map using a single picture.
Accurate camera pose estimation from an image observation in a previously mapped environment is commonly done through structure-based methods: by finding correspondences between 2D keypoints on the image and 3D structure points in the map. In order to make this correspondence search tractable in large scenes, existing pipelines either rely on search heuristics, or perform image retrieval to reduce the search space by comparing the current image to a database of past observations. However, these approaches result in elaborate pipelines or storage requirements that grow with the number of past observations. In this work, we propose a new paradigm for making structure-based relocalisation tractable. Instead of relying on image retrieval or search heuristics, we learn a direct mapping from image observations to the visible scene structure in a compact neural network. Given a query image, a forward pass through our novel visible structure retrieval network allows obtaining the subset of 3D structure points in the map that the image views, thus reducing the search space of 2D-3D correspondences. We show that our proposed method enables performing localisation with an accuracy comparable to the state of the art, while requiring lower computational and storage footprint.
Similar Papers
A Guide to Structureless Visual Localization
CV and Pattern Recognition
Helps cars know where they are better.
Structure-Aware Correspondence Learning for Relative Pose Estimation
CV and Pattern Recognition
Helps robots understand object shapes without seeing them.
From Street to Orbit: Training-Free Cross-View Retrieval via Location Semantics and LLM Guidance
CV and Pattern Recognition
Finds your location on a map from a photo.