Modeling Judges’ Scores in Artistic Gymnastics

Q3 Health Professions Open Sports Sciences Journal Pub Date : 2019-03-28 DOI:10.2174/1875399X01912010001
Melanie Mack, Maximilian Bryan, Gerhard Heyer, T. Heinen
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引用次数: 3

Abstract

In artistic gymnastics, performance is observed and evaluated by judges based on criteria defined in the code of points. However, there is a manifold of influences discussed in the literature that could potentially bias the judges’ evaluations in artistic gymnastics. In this context, several authors claim the necessity for alternative approaches to judging gymnastics utilizing biomechanical methods. The aim of this study was to develop and evaluate a model-based approach to judge gymnastics performance based on quantitative kinematic data of the performed skills. Four different model variants based on kinematic similarity calculated by a multivariate exploratory approach and the Recurrent Neural Network method were used to evaluate the relationship between the movement kinematics and the judges’ scores. The complete dataset consisted of movement kinematic data and judgment scores of a total of N = 173 trials of three different skills and routines from women’s artistic gymnastics. The results exhibit a significant relationship between the predicted score and the actual score for six of the twelve model calculations. The different model variants yielded a different prediction performance in general across all skills and also in terms of the different skills. In particular, only the Recurrent Neural Network model exhibited significant correlation values between the actual and the predicted scores for all three investigated skills. The results were discussed in terms of the differences of the models as well as the various factors that might play a role in the evaluation process.
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模拟艺术体操裁判成绩
在艺术体操中,表演是由评委根据评分标准进行观察和评估的。然而,文献中讨论的多种影响可能会对艺术体操评委的评价产生偏见。在这种情况下,几位作者声称有必要采用生物力学方法来评判体操。本研究的目的是开发和评估一种基于模型的方法,根据表演技能的定量运动学数据来判断体操成绩。基于运动相似性的四种不同模型变体,通过多元探索方法和递归神经网络方法计算,用于评估运动运动学与裁判得分之间的关系。完整的数据集包括女子艺术体操三种不同技能和套路的总共N=173次试验的动作运动学数据和判断得分。对于十二个模型计算中的六个,结果显示出预测得分和实际得分之间的显著关系。不同的模型变体在所有技能以及不同技能方面产生了不同的预测性能。特别是,只有递归神经网络模型在所有三项研究技能的实际得分和预测得分之间表现出显著的相关性值。根据模型的差异以及可能在评估过程中发挥作用的各种因素对结果进行了讨论。
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来源期刊
Open Sports Sciences Journal
Open Sports Sciences Journal Health Professions-Physical Therapy, Sports Therapy and Rehabilitation
CiteScore
1.00
自引率
0.00%
发文量
14
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