PDRNN: Modular Data-driven Pedestrian Dead Reckoning on Loosely Coupled Radio- and Inertial-Signalstreams
Peter Bauer, Andreas Porada, Felix Ott, Christopher Mutschler, Tobias Feigl

TL;DR
PDRNN is a modular AI-driven pedestrian dead reckoning system that fuses multimodal sensor data with uncertainty estimates, improving accuracy and robustness during dynamic movements.
Contribution
It introduces a novel RNN-based modular architecture for sensor data fusion in PDR, enabling flexible updates and improved performance over traditional methods.
Findings
PDRNN outperforms classic and ML-based methods in dynamic sports movement data.
The system effectively avoids error accumulation common in black-box approaches.
PDRNN provides forecast capabilities and enhanced component control.
Abstract
Modern pedestrian dead reckoning (PDR) systems rely on fusing noisy and biased estimates of position, velocity, and calibrated orientation derived from loosely coupled sensors to determine the current pose of a localized object. However, discrepancies in the sampling rates of sensor-specific estimation methods and unreliable transmission pose significant challenges. And traditional methods often fail to effectively fuse multimodal sensor data during dynamic movements characterized by high accelerations, velocities, and rapidly varying orientations. To address these limitations, we propose a simple recurrent neural network (RNN) architecture capable of implicitly forecasting asynchronous sensor data streams from diverse estimation methods along reference trajectories. The proposed approach introduces PDRNN, a modular hybrid AI-assisted PDR system that handles each component as an…
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