Real time estimation of vertical jump height with a markerless motion capture smartphone app: A proof-of-concept case study

Carlos Balsalobre-Fernández
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Abstract

The aim of the present proof-of-concept case study was to explore the potential of a novel technology using artificial intelligence techniques to measure countermovement jump height (CMJ-h) in real time. Four hundred jumps were recorded from a single male participant over a period of 24 consecutive weeks, while CMJ-h was simultaneously registered with a force plate and a newly developed version of the My Jump Lab iOS app that used computer vision to measure CMJ-h in real time with the iPhone camera. A very high correlation ( r = 0.971, 95% CI = 0.963–0.975) and large agreement (ICC = 0.969, 95% CI = 0.963–0.975) were observed between measurements. Statistically significant, large differences were observed between instruments (mean absolute difference = 0.06 ± 0.01 m, d = 4.4, p < 0.001). However, when using the regression equation between devices to correct the app’s raw data ( R2 = 0.94, y = 1.0004x – 0.0641), non-significant, trivial differences were observed (mean absolute difference = 0.01 ± 0.008 m, d = 0.1, p = 1.000). Collectively, the findings of this study highlight the potential of this novel artificial intelligence app for the measurement of CMJ-h in real time. However, considering the nature of this investigation, more research is needed to confirm the results observed in a wider population.
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利用无标记运动捕捉智能手机应用程序实时估算垂直跳跃高度:概念验证案例研究
本概念验证案例研究旨在探索一种利用人工智能技术实时测量反向运动跳跃高度(CMJ-h)的新型技术的潜力。在连续 24 周的时间内,对一名男性参赛者的 400 次跳跃进行了记录,同时使用测力板和新开发的 "我的跳跃实验室 "iOS 应用程序版本记录 CMJ-h,该应用程序使用计算机视觉技术通过 iPhone 摄像头实时测量 CMJ-h。测量结果之间具有很高的相关性(r = 0.971,95% CI = 0.963-0.975)和很大的一致性(ICC = 0.969,95% CI = 0.963-0.975)。从统计学角度看,仪器之间存在较大差异(平均绝对差异 = 0.06 ± 0.01 m,d = 4.4,p < 0.001)。然而,当使用设备间的回归方程来校正应用程序的原始数据时(R2 = 0.94,y = 1.0004x - 0.0641),观察到的差异并不显著且微不足道(平均绝对差异 = 0.01 ± 0.008 m,d = 0.1,p = 1.000)。总之,本研究的结果凸显了这款新型人工智能应用程序在实时测量 CMJ-h 方面的潜力。不过,考虑到本次调查的性质,还需要更多的研究来证实在更广泛人群中观察到的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.50
自引率
20.00%
发文量
51
审稿时长
>12 weeks
期刊介绍: The Journal of Sports Engineering and Technology covers the development of novel sports apparel, footwear, and equipment; and the materials, instrumentation, and processes that make advances in sports possible.
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