Paper ID: 2503.22272 • Published Mar 28, 2025
Robust simultaneous UWB-anchor calibration and robot localization for emergency situations
TL;DR
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In this work, we propose a factor graph optimization (FGO) framework to
simultaneously solve the calibration problem for Ultra-WideBand (UWB) anchors
and the robot localization problem. Calibrating UWB anchors manually can be
time-consuming and even impossible in emergencies or those situations without
special calibration tools. Therefore, automatic estimation of the anchor
positions becomes a necessity. The proposed method enables the creation of a
soft sensor providing the position information of the anchors in a UWB network.
This soft sensor requires only UWB and LiDAR measurements measured from a
moving robot. The proposed FGO framework is suitable for the calibration of an
extendable large UWB network. Moreover, the anchor calibration problem and
robot localization problem can be solved simultaneously, which saves time for
UWB network deployment. The proposed framework also helps to avoid artificial
errors in the UWB-anchor position estimation and improves the accuracy and
robustness of the robot-pose. The experimental results of the robot
localization using LiDAR and a UWB network in a 3D environment are discussed,
demonstrating the performance of the proposed method. More specifically, the
anchor calibration problem with four anchors and the robot localization problem
can be solved simultaneously and automatically within 30 seconds by the
proposed framework. The supplementary video and codes can be accessed via
this https URL
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