Machine Learning to Improve Orientation Estimation in Sports Situations Challenging for Inertial Sensor Use

Journal Article (2021)
Author(s)

Marit P. van Dijk (TU Delft - Biomechanical Engineering, Vrije Universiteit Amsterdam)

Manon Kok (TU Delft - Team Manon Kok)

Monique Berger (The Hague University of Applied Sciences)

Marco J.M. Hoozemans (Vrije Universiteit Amsterdam)

H.E.J. Veeger (TU Delft - Biomechanical Engineering)

Department
Biomechanical Engineering
Copyright
© 2021 M.P. van Dijk, M. Kok, Monique A.M. Berger, Marco J.M. Hoozemans, H.E.J. Veeger
DOI related publication
https://doi.org/10.3389/fspor.2021.670263
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 M.P. van Dijk, M. Kok, Monique A.M. Berger, Marco J.M. Hoozemans, H.E.J. Veeger
Department
Biomechanical Engineering
Volume number
3
Reuse Rights

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Abstract

In sports, inertial measurement units are often used to measure the orientation of human body segments. A Madgwick (MW) filter can be used to obtain accurate inertial measurement unit (IMU) orientation estimates. This filter combines two different orientation estimates by applying a correction of the (1) gyroscope-based estimate in the direction of the (2) earth frame-based estimate. However, in sports situations that are characterized by relatively large linear accelerations and/or close magnetic sources, such as wheelchair sports, obtaining accurate IMU orientation estimates is challenging. In these situations, applying the MW filter in the regular way, i.e., with the same magnitude of correction at all time frames, may lead to estimation errors. Therefore, in this study, the MW filter was extended with machine learning to distinguish instances in which a small correction magnitude is beneficial from instances in which a large correction magnitude is beneficial, to eventually arrive at accurate body segment orientations in IMU-challenging sports situations. A machine learning algorithm was trained to make this distinction based on raw IMU data. Experiments on wheelchair sports were performed to assess the validity of the extended MW filter, and to compare the extended MW filter with the original MW filter based on comparisons with a motion capture-based reference system. Results indicate that the extended MW filter performs better than the original MW filter in assessing instantaneous trunk inclination (7.6 vs. 11.7° root-mean-squared error, RMSE), especially during the dynamic, IMU-challenging situations with moving athlete and wheelchair. Improvements of up to 45% RMSE were obtained for the extended MW filter compared with the original MW filter. To conclude, the machine learning-based extended MW filter has an acceptable accuracy and performs better than the original MW filter for the assessment of body segment orientation in IMU-challenging sports situations.

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