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  4. Magnetic Indoor Localization Through CNN Regression and Rotation Invariance
 
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March 20, 2026
Conference Paper
Title

Magnetic Indoor Localization Through CNN Regression and Rotation Invariance

Abstract
Indoor positioning is an essential technology for a wide range of applications in GNSS-denied environments, including indoor navigation and IoT systems. Combining convolutional neural networks (CNNs) and magnetic field-based features offers a low-cost, infrastructure-free solution for precise positioning. While magnetic fingerprints are a promising approach for indoor positioning, models trained on raw 3D magnetometer data are highly sensitive to device orientation. We address this by using two rotation invariant features derived from the 3D magnetic field: the norm (Mn) and the projection onto the gravity axis (Mg). We train a lightweight 7-layer dilated CNN (MagNetS/XL) on magnetic sequences to directly regress (x,y) positions. Using the MagPie dataset (three buildings, handheld trajectories), we systematically evaluate fixed and random rotations of test and/or train data. Raw 3D inputs (Mx,My,Mz) exhibit isotropic error increases under fixed 90° rotations and further degrade with growing random rotations. In contrast, 2D (Mn,Mg) inputs maintain rotation invariant accuracy and surpass the 3D inputs once rotation exceeds building-specific thresholds for three reference buildings: 0° for Loomis (large), 5° for Talbot (medium), and 6° for CSL (small). MagNetXL achieves or exceeds state-of-the-art accuracy on the MagPie dataset, and MagNetS delivers similar performance with roughly one third of the parameters, favoring mobile deployment. These results show that the robustness gained from rotation invariant inputs outweighs the loss of input dimensionality in realistic usage, allowing mapping and localization without orientation alignment or added infrastructure.
Author(s)
Rosé, Helge  
Fraunhofer-Institut für Offene Kommunikationssysteme FOKUS  
Klipp, Konstantin
Fraunhofer-Institut für Offene Kommunikationssysteme FOKUS  
Koubek, Tom
Fraunhofer-Institut für Offene Kommunikationssysteme FOKUS  
Schäufele, Bernd
Technische Universität Berlin  
Radusch, Ilja
Technische Universität Berlin  
Mainwork
4th International Conference on Mechatronics, Control and Robotics (ICMCR 2026)  
Conference
International Conference on Mechatronics, Control and Robotics 2026  
File(s)
Download (270.45 KB)
Rights
Use according to copyright law
DOI
10.1109/ICMCR69541.2026.11533953
10.24406/h-517435
Language
English
Fraunhofer-Institut für Offene Kommunikationssysteme FOKUS  
Keyword(s)
  • indoor positioning

  • neural network

  • CNN

  • magnetic indoor localization

  • IoT

  • magnetic field

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