Fast and Noise-Resilient Magnetic Field Mapping on a Low-Cost UAV Using Gaussian Process Regression
Prince E. Kuevor, Maani Ghaffari, Ella M. Atkins, James W. Cutler

TL;DR
This paper develops techniques to create accurate magnetic field maps on low-cost UAVs, addressing UAV-induced noise and using Gaussian process regression to improve indoor navigation reliability.
Contribution
It introduces a compromise GPR map trained on multiple flights to account for UAV-induced magnetic noise and variations, enhancing indoor UAV localization.
Findings
Noise reduction improves magnetic field measurement accuracy.
Compromise GPR maps enable reliable indoor position estimation.
Methods effectively mitigate UAV electronics interference.
Abstract
This work presents a number of techniques to improve the ability to create magnetic field maps on a UAV which can be used to quickly and reliably gather magnetic field observations at multiple altitudes in a workspace. Unfortunately, the electronics on the UAV can introduce their own magnetic fields, distorting the resultant magnetic field map. We show methods of reducing and working with UAV-induced noise to better enable magnetic fields as a sensing modality for indoor navigation. First, some gains in our flight controller create high-frequency motor commands that introduce large noise in the measured magnetic field. Next, we implement a common noise reduction method of distancing the magnetometer from other components on our UAV. Finally, we introduce what we call a compromise GPR (Gaussian process regression) map that can be trained on multiple flight tests to learn any…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Robotics and Sensor-Based Localization · Inertial Sensor and Navigation
