Terrain-Aided SLAM with Limited-Size Reference Maps Using Gaussian Processes
Langue
EN
Actes de congrès/Proceedings
Ce document a été publié dans
2023 31st European Signal Processing Conference (EUSIPCO), 2023-09-04, Helsinki. 2023-09-04
IEEE
Résumé
Terrain-aided navigation is often used for unmanned aerial vehicles. This method consists in estimating the current dynamics and position of a vehicle by matching terrain profiles obtained by exteroceptive sensors with ...Lire la suite >
Terrain-aided navigation is often used for unmanned aerial vehicles. This method consists in estimating the current dynamics and position of a vehicle by matching terrain profiles obtained by exteroceptive sensors with onboard maps. Whereas the resolution of the map plays a crucial role in minimising positioning errors, accurate reference maps are difficult to upload when transmission restrictions are experienced. In this context of sparse communications, we propose to model the maps by Gaussian Processes completely characterised by a mean function that can be interpreted as a low resolution approximation of the map and a covariance kernel to account for the spatial correlations. The objective of this paper is then to perform simultaneous localisation and mapping by leveraging radio-altimetric data. The inference is carried out by a non-linear Bayesian filter that takes advantage of the conditional linear Gaussianity of the state space model: the Rao-Blackwellised particle filter.< Réduire
Mots clés
Maximum likelihood detection
Simultaneous localization and mapping
Navigation
Gaussian processes
Nonlinear filters
Signal processing
Sensor phenomena and characterization
Terrain-Aided SLAM
Gaussian Processes
Particle Filtering
Unités de recherche