Individualised Ball Speed Prediction in Baseball Pitching Based on IMU Data

Journal Article (2021)
Author(s)

L. Gomaz (TU Delft - Statistics, TU Delft - Biomechanical Engineering)

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

E. van der Graaff (Vrije Universiteit Amsterdam)

B. van Trigt (TU Delft - Biomechanical Engineering, Vrije Universiteit Amsterdam)

F. H. van Meulen (TU Delft - Statistics)

Research Group
Statistics
Copyright
© 2021 L. Gomaz, H.E.J. Veeger, E. van der Graaff, B. van Trigt, F.H. van der Meulen
DOI related publication
https://doi.org/10.3390/s21227442
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 L. Gomaz, H.E.J. Veeger, E. van der Graaff, B. van Trigt, F.H. van der Meulen
Research Group
Statistics
Issue number
22
Volume number
21
Reuse Rights

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Abstract

Ball velocity is considered an important performance measure in baseball pitching. Proper pitching mechanics play an important role in both maximising ball velocity and injury-free participation of baseball pitchers. However, an individual pitcher’s characteristics display individuality and may contribute to velocity imparted to the ball. The aim of this study is to predict ball velocity in baseball pitching, such that prediction is tailored to the individual pitcher, and to investigate the added value of the individuality to predictive performance. Twenty-five youth baseball pitchers, members of a national youth baseball team and six baseball academies in The Netherlands, performed ten baseball pitches with maximal effort. The angular velocity of pelvis and trunk were measured with IMU sensors placed on pelvis and sternum, while the ball velocity was measured with a radar gun. We develop three Bayesian regression models with different predictors which were subsequently evaluated based on predictive performance. We found that pitcher’s height adds value to ball velocity prediction based on body segment rotation. The developed method provides a feasible and affordable method for ball velocity prediction in baseball pitching