Mobile Robot Localization: a Modular, Odometry-Improving Approach
Mozzarelli, Luca, Cattaneo, Luca, Corno, Matteo, Savaresi, Sergio Matteo
–arXiv.org Artificial Intelligence
Despite the number of works published in recent years, vehicle localization remains an open, challenging problem. While map-based localization and SLAM algorithms are getting better and better, they remain a single point of failure in typical localization pipelines. This paper proposes a modular localization architecture that fuses sensor measurements with the outputs of off-the-shelf localization algorithms. The fusion filter estimates model uncertainties to improve odometry in case absolute pose measurements are lost entirely. The architecture is validated experimentally on a real robot navigating autonomously proving a reduction of the position error of more than 90% with respect to the odometrical estimate without uncertainty estimation in a two-minute navigation period without position measurements.
arXiv.org Artificial Intelligence
Mar-20-2024
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