Dispelling Four Challenges in Inertial Motion Tracking with One Recurrent Inertial Graph-based Estimator (RING)
Simon Bachhuber, Ive Weygers, Thomas Seel

TL;DR
This paper introduces RING, a neural network-based estimator that robustly addresses four real-world challenges in inertial motion tracking, demonstrating high accuracy, generalization from simulation to real data, and real-time capability.
Contribution
The paper extends RING to handle diverse sampling rates and four practical challenges, enabling accurate, real-time inertial motion tracking in complex environments.
Findings
Achieves 8.10° mean absolute error in complex scenarios
Demonstrates zero-shot generalization from simulation to experimental data
Operates in real-time with robustness to sampling rate variations
Abstract
In this paper, we extend the Recurrent Inertial Graph-based Estimator (RING), a novel neural-network-based solution for Inertial Motion Tracking (IMT), to generalize across a large range of sampling rates, and we demonstrate that it can overcome four real-world challenges: inhomogeneous magnetic fields, sensor-to-segment misalignment, sparse sensor setups, and nonrigid sensor attachment. RING can estimate the rotational state of a three-segment kinematic chain with double hinge joints from inertial data, and achieves an experimental mean-absolute-(tracking)-error of 8.10 +/- 1.19 degrees if all four challenges are present simultaneously. The network is trained on simulated data yet evaluated on experimental data, highlighting its remarkable ability to zero-shot generalize from simulation to experiment. We conduct an ablation study to analyze the impact of each of the four challenges on…
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Taxonomy
TopicsInertial Sensor and Navigation · Medical Imaging and Analysis
