TL;DR
This paper introduces an automated system that converts CAD files into hierarchical, semantically-rich OpenStreetMap representations for robust indoor robot navigation, bypassing traditional SLAM limitations.
Contribution
The novel pipeline automatically extracts structural and semantic information from CAD files to generate comprehensive indoor maps suitable for lifelong robot navigation.
Findings
Creates detailed hierarchical indoor maps from CAD data.
Automatically associates textual labels to enhance map semantics.
Merges multiple floors into a unified topological model.
Abstract
The deployment of autonomous mobile robots is predicated on the availability of environmental maps, yet conventional generation via SLAM (Simultaneous Localization and Mapping) suffers from significant limitations in time, labor, and robustness, particularly in dynamic, large-scale indoor environments where map obsolescence can lead to critical localization failures. To address these challenges, this paper presents a complete and automated system for converting architectural Computer-Aided Design (CAD) files into a hierarchical topometric OpenStreetMap (OSM) representation, tailored for robust life-long robot navigation. Our core methodology involves a multi-stage pipeline that first isolates key structural layers from the raw CAD data and then employs an AreaGraph-based topological segmentation to partition the building layout into a hierarchical graph of navigable spaces. This process…
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