Wiometrics: Comparative Performance of Artificial Neural Networks for Wireless Navigation
Russ Whiton, Junshi Chen, Fredrik Tufvesson

TL;DR
This paper evaluates the performance of various artificial neural network architectures and data representations, called wiometrics, for vehicle navigation using cellular signals in urban environments, achieving meter-level accuracy.
Contribution
It introduces a novel approach using neural networks and wiometrics for wireless navigation with real-world cellular data, highlighting potential future directions.
Findings
Achieved position accuracy of a few meters.
Achieved heading accuracy of a few degrees.
Compared different neural network architectures and data representations.
Abstract
Radio signals are used broadly as navigation aids, and current and future terrestrial wireless communication systems have properties that make their dual-use for this purpose attractive. Sub-6 GHz carrier frequencies enable widespread coverage for data communication and navigation, but typically offer smaller bandwidths and limited resolution for precise estimation of geometries, particularly in environments where propagation channels are diffuse in time and/or space. Non-parametric methods have been employed with some success for such scenarios both commercially and in literature, but often with an emphasis on low-cost hardware and simple models of propagation, or with simulations that do not fully capture hardware impairments and complex propagation mechanisms. In this article, we make opportunistic observations of downlink signals transmitted by commercial cellular networks by using…
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Taxonomy
TopicsMillimeter-Wave Propagation and Modeling · Indoor and Outdoor Localization Technologies · Radio Wave Propagation Studies
MethodsNetwork On Network
