攀爬中的全身运动模式识别*

L. Seifert, Vladislavs Dovgalecs, Jérémie Boulanger, D. Orth, R. Hérault, K. Davids
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引用次数: 10

摘要

本研究的目的是通过计算攀爬过程中四肢和骨盆的三维统一向量,提出一种识别攀爬过程中全身运动模式的方法。一名中等技能水平的登山者穿越了两条难度相似的简单路线(法国标准难度为5c),在顶绳条件下高度为10米。第一条路线被简单地设计为允许水平抓边,而第二条路线被设计得更复杂,允许水平和垂直抓边。五个惯性测量单元(imu)分别连接在骨盆、双脚和前臂上,分析每个肢体和骨盆的三维统一向量。进行聚类分析以检测攀爬过程中四肢和骨盆协调产生的聚类数量。分析发现了22个集群,其中11个集群在两条路线上是独特的。6个集群是简单货舱设计路线所特有的,5个集群仅在复杂货舱设计路线中出现。我们得出的结论是,聚类支持在遍历过程中识别全身方向,这代表了一种分析水平,可以为攀爬过程中的性能监测提供有用的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Full-body movement pattern recognition in climbing*
The aim of this study was to propose a method for full-body movement pattern recognition in climbing, by computing the 3D unitary vector of the four limbs and pelvis during performance. One climber with an intermediate skill level traversed two easy routes of similar rates of difficulty (5c difficulty on French scale), 10m in height under top-rope conditions. The first route was simply designed to allow horizontal edge-hold grasping, while the second route was designed with more complexity to allow both horizontal and vertical edge-hold grasping. Five inertial measurement units (IMUs) were attached to the pelvis, both feet and forearms to analyse the 3D unitary vector of each limb and pelvis. Cluster analysis was performed to detect the number of clusters that emerged from coordination of the four limbs and pelvis during climbing performance. Analysis revealed 22 clusters with 11 clusters unique across the two routes. Six clusters were unique to the simple hold design route and five clusters emerged only in the complex hold design route. We conclude that clustering supported identification of full-body orientations during traversal, representing a level of analysis that can provide useful information for performance monitoring in climbing.
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