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MapAnything: Mapping Urban Assets using Single Street-View Images

Published: September 18, 2025 | arXiv ID: 2509.14839v1

By: Miriam Louise Carnot , Jonas Kunze , Erik Fastermann and more

Potential Business Impact:

Finds city objects and problems from pictures.

Business Areas:
Mapping Services Navigation and Mapping

To maintain an overview of urban conditions, city administrations manage databases of objects like traffic signs and trees, complete with their geocoordinates. Incidents such as graffiti or road damage are also relevant. As digitization increases, so does the need for more data and up-to-date databases, requiring significant manual effort. This paper introduces MapAnything, a module that automatically determines the geocoordinates of objects using individual images. Utilizing advanced Metric Depth Estimation models, MapAnything calculates geocoordinates based on the object's distance from the camera, geometric principles, and camera specifications. We detail and validate the module, providing recommendations for automating urban object and incident mapping. Our evaluation measures the accuracy of estimated distances against LiDAR point clouds in urban environments, analyzing performance across distance intervals and semantic areas like roads and vegetation. The module's effectiveness is demonstrated through practical use cases involving traffic signs and road damage.

Repos / Data Links

Page Count
16 pages

Category
Computer Science:
CV and Pattern Recognition