Machine learning-based classification of Taekwondo Poomsae side kick performance using kinematic parameters and physical characteristics.

IF 2 3区 医学 Q3 ENGINEERING, BIOMEDICAL
Ui-Jae Hwang, Sung-Hoon Jung, Ho-Chul Ji, Sil-Ah Choi, In-Ju Bang
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引用次数: 0

Abstract

To develop and validate machine learning (ML) models for classifying Taekwondo Poomsae side kick (SK) performance using kinematic parameters and physical function characteristics. Forty collegiate Taekwondo Poomsae athletes performed SKs with both legs. Two models were developed: a kinematic model incorporating SK and pelvic tilt angles at face and maximal heights, and a physical function model including range of motion measurements and Y-balance test scores. Performance quality was assessed by an expert evaluator using standardised criteria. Five ML algorithms were tested, and their performance was evaluated using area under the curve (AUC) analysis. Random forest classifiers demonstrated excellent performance in both models (kinematic model: AUC = 0.930, accuracy = 89.3%; physical function model: AUC = 0.930, accuracy = 89.3%). In the kinematic model, SK angle at maximal height emerged as the strongest predictor. For the physical function model, Y-balance test composite score showed the largest impact. These findings represent a substantial improvement over conventional subjective assessment methods by providing quantifiable, objective classification with high accuracy. ML algorithms can effectively classify Taekwondo SK performance using both kinematic and physical function parameters. SK angle at maximal height and dynamic balance emerged as the most important predictors in their respective models, providing quantitative criteria for performance assessment.

基于机器学习的跆拳道扑空侧踢动作运动学参数和物理特征分类。
开发和验证机器学习(ML)模型,用于使用运动学参数和物理功能特征对跆拳道Poomsae侧踢(SK)性能进行分类。40名大学生跆拳道运动员用双腿表演了SKs。建立了两个模型:包含面部SK和骨盆倾斜角度和最大高度的运动学模型,以及包括运动测量范围和y平衡测试分数的物理功能模型。性能质量由专家评估人员使用标准化标准进行评估。测试了五种ML算法,并使用曲线下面积(AUC)分析评估了它们的性能。随机森林分类器在两种模型中均表现出优异的性能(运动学模型:AUC = 0.930,准确率= 89.3%;物理功能模型:AUC = 0.930,准确率= 89.3%)。在运动学模型中,最大高度处的SK角是最强的预测因子。对于物理功能模型,Y-balance测试综合得分的影响最大。这些发现通过提供高精度的可量化的客观分类,代表了对传统主观评估方法的实质性改进。ML算法可以使用运动学和物理函数参数对跆拳道的SK性能进行有效分类。在各自的模型中,最大高度SK角和动平衡成为最重要的预测因子,为性能评估提供了定量标准。
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来源期刊
Sports Biomechanics
Sports Biomechanics 医学-工程:生物医学
CiteScore
5.70
自引率
9.10%
发文量
135
审稿时长
>12 weeks
期刊介绍: Sports Biomechanics is the Thomson Reuters listed scientific journal of the International Society of Biomechanics in Sports (ISBS). The journal sets out to generate knowledge to improve human performance and reduce the incidence of injury, and to communicate this knowledge to scientists, coaches, clinicians, teachers, and participants. The target performance realms include not only the conventional areas of sports and exercise, but also fundamental motor skills and other highly specialized human movements such as dance (both sport and artistic). Sports Biomechanics is unique in its emphasis on a broad biomechanical spectrum of human performance including, but not limited to, technique, skill acquisition, training, strength and conditioning, exercise, coaching, teaching, equipment, modeling and simulation, measurement, and injury prevention and rehabilitation. As well as maintaining scientific rigour, there is a strong editorial emphasis on ''reader friendliness''. By emphasising the practical implications and applications of research, the journal seeks to benefit practitioners directly. Sports Biomechanics publishes papers in four sections: Original Research, Reviews, Teaching, and Methods and Theoretical Perspectives.
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