Experts lift differently: Classification of weight-lifting athletes

Rolf Adelsberger, G. Tröster
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引用次数: 20

Abstract

The process of learning a novel body movement exposes a student to multiple difficulties. Understanding the range of motion is fundamental for learning to control the involved body parts. Theory and instructions need to be mapped to body movements: a student not only needs to mimic or copy the range of motion of individual body parts, but he also needs to trigger the motion fragments in the correct order. Not only correct order is important, but also precise timing. If the movements in questions are intensified by additional load, optimality of the motion patterns becomes crucial. Sub-optimal execution of an exercise reduces the performance or can even induce failure of completion. Correct execution is a subtle interplay between the correct forces at the right times. In this paper, we present a sensor system that is able to categorize movements into multiple quality classes and athletes into two experience classes. For this work we conducted a study involving 16 athletes performing squat-presses, a simple yet non-trivial exercise requiring barbells. We calculated various features out of raw accelerometer data acquired by two inertial measurement units attached to the athletes' bodies. We evaluated exercise performances of the participants ranging from beginners to experts. We introduce the biomechanical properties of the movement and show that our system can differentiate between four quality classes (poor, fair, good, perfect) with an accuracy above 93% and discriminate between a beginner athlete and an advanced athlete with an accuracy of more than 94%.
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专家举得不同:举重运动员的分类
学习一种新的身体动作的过程使学生面临多种困难。了解运动范围是学习控制相关身体部位的基础。理论和指令需要映射到身体动作:学生不仅需要模仿或复制单个身体部位的运动范围,还需要以正确的顺序触发运动片段。不仅正确的顺序很重要,而且精确的时机也很重要。如果问题中的运动因额外负载而加剧,运动模式的最优性就变得至关重要。练习的次优执行会降低性能,甚至可能导致完成失败。正确的执行是正确的力量在正确的时间之间微妙的相互作用。在本文中,我们提出了一个传感器系统,该系统能够将运动分为多个质量类别,并将运动员分为两个体验类别。为了这项工作,我们进行了一项研究,涉及16名运动员进行蹲推,这是一项简单但不琐碎的运动,需要杠铃。我们从附着在运动员身上的两个惯性测量单元获得的原始加速度计数据中计算出各种特征。我们评估了从初学者到专家的参与者的运动表现。我们介绍了该运动的生物力学特性,并表明我们的系统可以区分四种质量等级(差、一般、好、完美),准确率超过93%,区分初级运动员和高级运动员的准确率超过94%。
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