Sprint Assessment Using Machine Learning And A Wearable Accelerometer

ASU Author/Contributor (non-ASU co-authors, if there are any, appear on document)
Alan Needle Ph.D., Assistant Professor (Creator)
Institution
Appalachian State University (ASU )
Web Site: https://library.appstate.edu/

Abstract: Field-based sprint performance assessments rely on metrics derived from a simple model of sprinting dynamics parameterized by 2 constants, v0 and t, which indicate a sprinter’s maximal theoretical velocity and the time it takes to approach v0, respectively. This study aims to automate sprint assessment by estimating v0 and t using machine learning and accelerometer data. To this end, photocells recorded 10-m split times of 28 subjects for three 40-m sprints while wearing an accelerometer around the waist. Features extracted from the accelerometer data were used to train a classifier to identify the sprint start and regression models to estimate the sprint model parameters. Estimates of v0, t, and 30-m sprint time (t30) were compared between the proposed method and a photocell method using root mean square error and Bland–Altman analysis. The root mean square error of the sprint start estimate was .22 seconds and ranged from .52 to .93 m/s for v0, .14 to .17 seconds for t, and .23 to .34 seconds for t30. Model-derived sprint performance metrics from most regression models were significantly (P < .01) correlated with t30. Comparison of the proposed method and a physics-based method suggests pursuit of a combined approach because their strengths appear to complement each other.

Additional Information

Publication
Gurchiek, R. D., Rupasinghe Arachchige Don, H. S., Pelawa Watagoda, L. R., McGinnis, R. S., van Werkhoven, H., Needle, A. R., McBride, J. M., & Arnholt, A. T. (2019). Sprint Assessment Using Machine Learning and a Wearable Accelerometer, Journal of Applied Biomechanics, 35(2), 164-169. DOI: https://doi.org/10.1123/jab.2018-0107. Publisher version of record available at: https://journals.humankinetics.com/view/journals/jab/35/2/article-p164.xml
Language: English
Date: 2019
Keywords
wearable sensor, inertial sensor, sprint assessment, statistical learning

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