基于可穿戴技术的跑步运动分析数据驱动方法

Christina Strohrmann, M. Rossi, B. Arnrich, G. Tröster
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引用次数: 14

摘要

数百万人在跑步。运动科学家主要使用光学运动捕捉来研究跑步运动学与疲劳、损伤或跑步经济性的关系。研究发现,跑步运动学是高度个体化的,往往不能用单一变量来概括。因此,我们提出了一种使用可穿戴技术的数据驱动分析,结合统计特征和机器学习技术,可以识别非线性、复杂的关系。可穿戴技术可以在不受约束的环境中进行大范围的运动学分析。20名跑步者在两项实验中佩戴了12个传感器:一项是全力以赴的测试,另一项是疲劳跑步。我们使用支持向量机(SVM)来区分技能水平组,并在上半身安装加速度传感器,准确率达到76.92%。通过特征选择,根据运动随疲劳的变化对传感器位置进行排序。这个排名与运动科学家的视觉注释是一致的。我们提出使用主成分分析(PCA)定量测量运动变化,并发现所有跑步者与其感知疲劳等级的平均相关性为0.8369。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data-Driven Approach to Kinematic Analysis in Running Using Wearable Technology
Millions of people run. Movement scientists investigate the relationship of running kinematics to fatigue, injury, or running economy mainly using optical motion capture. It was found that running kinematics are highly individual and often cannot be summarized by single variables. We thus present a data-driven analysis of running technique using wearable technology, combining statistical features and machine learning techniques, which allows to identify non-linear, complex relationships. Wearable technology enables running kinematic analysis to a broad mass in unconstrained environments. 20 runners wore 12 sensor units during two experiments: an all out test and a fatiguing run. We used a Support Vector Machine (SVM) to distinguish skill level groups and achieved an accuracy of 76.92% with an acceleration sensor on the upper body. Sensor positions were ranked according to the movement change with fatigue using a feature selection. This ranking was consistent with visual annotations of a movement scientist. We propose a quantitative measure of movement change using a principal component analysis (PCA) and found an average correlation of 0.8369 for all runners with their perceived rating of fatigue.
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