Drift-Free Indoor Navigation Using Simultaneous Localization and Mapping of the Ambient Heterogeneous Magnetic Field
Jacky C.K. Chow

TL;DR
This paper introduces a magnetic field-based SLAM method for indoor navigation that achieves millimeter-level accuracy without drift, using Gaussian Process SLAM to match magnetic signatures and perform loop-closure.
Contribution
The novel approach extends SLAM to ambient magnetic fields, enabling drift-free indoor navigation with continuous magnetic features and simultaneous calibration of inertial sensors.
Findings
Achieves millimeter-level indoor positioning accuracy.
Provides drift-free navigation without external references.
Enables magnetic field map estimation and sensor calibration.
Abstract
In the absence of external reference position information (e.g. GNSS) SLAM has proven to be an effective method for indoor navigation. The positioning drift can be reduced with regular loop-closures and global relaxation as the backend, thus achieving a good balance between exploration and exploitation. Although vision-based systems like laser scanners are typically deployed for SLAM, these sensors are heavy, energy inefficient, and expensive, making them unattractive for wearables or smartphone applications. However, the concept of SLAM can be extended to non-optical systems such as magnetometers. Instead of matching features such as walls and furniture using some variation of the ICP algorithm, the local magnetic field can be matched to provide loop-closure and global trajectory updates in a Gaussian Process (GP) SLAM framework. With a MEMS-based inertial measurement unit providing a…
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