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arxiv: 1509.04634 · v2 · pith:GG7N7WUEnew · submitted 2015-09-15 · 💻 cs.RO · stat.ML

Modeling and interpolation of the ambient magnetic field by Gaussian processes

classification 💻 cs.RO stat.ML
keywords fieldmagneticmodelmodelingambientgaussianinterpolationallows
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Anomalies in the ambient magnetic field can be used as features in indoor positioning and navigation. By using Maxwell's equations, we derive and present a Bayesian non-parametric probabilistic modeling approach for interpolation and extrapolation of the magnetic field. We model the magnetic field components jointly by imposing a Gaussian process (GP) prior on the latent scalar potential of the magnetic field. By rewriting the GP model in terms of a Hilbert space representation, we circumvent the computational pitfalls associated with GP modeling and provide a computationally efficient and physically justified modeling tool for the ambient magnetic field. The model allows for sequential updating of the estimate and time-dependent changes in the magnetic field. The model is shown to work well in practice in different applications: we demonstrate mapping of the magnetic field both with an inexpensive Raspberry Pi powered robot and on foot using a standard smartphone.

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