Sprint assessment using machine learning and a wearable accelerometer
(Sprintmessung mittels maschinellem Lernen und einem tragbaren Beschleunigungssensor)
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.
© Copyright 2019 Journal of Applied Biomechanics. Human Kinetics. Alle Rechte vorbehalten.
| Schlagworte: | |
|---|---|
| Notationen: | Biowissenschaften und Sportmedizin Naturwissenschaften und Technik Trainingswissenschaft |
| Tagging: | Akzelerometrie maschinelles Lernen |
| Veröffentlicht in: | Journal of Applied Biomechanics |
| Sprache: | Englisch |
| Veröffentlicht: |
2019
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| Online-Zugang: | https://doi.org/10.1123/jab.2018-0107 |
| Jahrgang: | 35 |
| Heft: | 2 |
| Seiten: | 164-169 |
| Dokumentenarten: | Artikel |
| Level: | hoch |