Large Scale Mapping of Indoor Magnetic Field by Local and Sparse Gaussian Processes

Published: 05 Sept 2024, Last Modified: 08 Nov 2024CoRL 2024EveryoneRevisionsBibTeXCC BY 4.0
Keywords: Gaussian process regression, magnetic field maps, indoor localization
TL;DR: We introduce a new large-scale magnetic field map model based on a combination of a sparse approximation of Gaussian process regression and a local expert aggregation method.
Abstract: Magnetometer-based indoor navigation uses variations in the magnetic field to determine the robot's location. For that, a magnetic map of the environment has to be built beforehand from a collection of localized magnetic measurements. Existing solutions built on sparse Gaussian Process (GP) regression do not scale well to large environments, being either slow or resulting in discontinuous prediction. In this paper, we propose to model the magnetic field of large environments based on GP regression. We first modify a deterministic training conditional sparse GP by accounting for magnetic field physics to map small environments efficiently. We then scale the model on larger scenes by introducing a local expert aggregation framework. It splits the scene into subdomains, fits a local expert on each, and then aggregates expert predictions in a differentiable and probabilistic way. We evaluate our model on real and simulated data and show that we can smoothly map a three-story building in a few hundred milliseconds.
Supplementary Material: zip
Website: https://github.com/CEA-LIST/large-scale-magnetic-mapping
Publication Agreement: pdf
Student Paper: yes
Spotlight Video: mp4
Submission Number: 236
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