Ultra-Wideband Indoor Positioning and IMU-Based Activity Recognition for Ice Hockey Analytics.

Robbe Vleugels, Ben Van Herbruggen, Jaron Fontaine, Eli De Poorter
Author Information
  1. Robbe Vleugels: IDLab, Department of Information Technology, Ghent University-imec, 9000 Ghent, Belgium.
  2. Ben Van Herbruggen: IDLab, Department of Information Technology, Ghent University-imec, 9000 Ghent, Belgium. ORCID
  3. Jaron Fontaine: IDLab, Department of Information Technology, Ghent University-imec, 9000 Ghent, Belgium. ORCID
  4. Eli De Poorter: IDLab, Department of Information Technology, Ghent University-imec, 9000 Ghent, Belgium. ORCID

Abstract

Currently, gathering statistics and information for ice hockey training purposes mostly happens by hand, whereas the automated systems that do exist are expensive and difficult to set up. To remedy this, in this paper, we propose and analyse a wearable system that combines player localisation and activity classification to automatically gather information. A stick-worn inertial measurement unit was used to capture acceleration and rotation data from six ice hockey activities. A convolutional neural network was able to distinguish the six activities from an unseen player with a 76% accuracy at a sample frequency of 100 Hz. Using unseen data from players used to train the model, a 99% accuracy was reached. With a peak detection algorithm, activities could be automatically detected and extracted from a complete measurement for classification. Additionally, the feasibility of a time difference of arrival based ultra-wideband system operating at a 25 Hz update rate was determined. We concluded that the system, when the data were filtered and smoothed, provided acceptable accuracy for use in ice hockey. Combining both, it was possible to gather useful information about a wide range of interesting performance measures. This shows that our proposed system is a suitable solution for the analysis of ice hockey.

Keywords

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MeSH Term

Acceleration
Hockey
Rotation

Word Cloud

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