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Predicting golf ball trajectories from swing plane: An artificial neural networks approach

机译:从挥杆平面预测高尔夫球的轨迹:一种人工神经网络方法

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摘要

Quantifying and validating descriptive heuristic rules that govern someone's skills and expertise have been a known philosophical quest since the early Greek philosophers. Inherent to sport coaching is the qualitative assessment of complex human motion patterns, relying on subjective and 'hard-to-quantify' criteria that can be subject to experts coaches disagreement. This paper presents an application of Artificial Neural Networks (ANN) for the discovery of predictive power of swing plane heuristic rules influencing golf ball trajectories. The golf data set (531 samples from 14 golfers) utilised in the experiments was captured via a ubiquitous computing device embedded in the handle of a driver club. Out of multiple swing performance factors influencing ball trajectory, the selected subset of features for subspace modelling was linked only to the swing plane concept. Quantitative evidence supporting empirical coaching rules for swing plane assessment were obtained by supervised learning of ANN models. Optimised ANN models Radial Basis Function (RBF) and Support Vector Machine (SVM), were able to draw inference from captured swing data linking ball trajectories with variations of swing plane (with overall classification of 87%). The obtained swing plane computer model inference, data analysis and implemented concept of generic data export utility support kinesiology, golf coaching, inform club fitting, golf manufacturing technology and demonstrate new cross- and multi-disciplinary integration of sport science, augmented coaching, ubiquitous computing, computational intelligence and the applications of expert systems for growing availability of sport, injury prevention/rehabilitation and golf related data sets. (C) 2016 Elsevier Ltd. All rights reserved.
机译:自早期希腊哲学家问世以来,量化和验证支配某人技能和专业知识的描述性启发式规则一直是一种已知的哲学追求。运动指导的本质是对复杂的人类运动模式的定性评估,它依赖于主观和“难以量化”的标准,这些标准可能会引起专家教练的不同意见。本文介绍了人工神经网络(ANN)在发现影响高尔夫球轨迹的挥杆平面启发式规则的预测能力中的应用。实验中使用的高尔夫数据集(来自14个高尔夫球手的531个样本)是通过嵌入在驾驶杆手柄中的无处不在的计算设备捕获的。在影响球轨迹的多个挥杆性能因素中,用于子空间建模的所选特征子集仅与挥杆平面概念相关。通过对ANN模型的监督学习,获得了支持经验教练指导进行挥杆平面评估的定量证据。优化的ANN模型的径向基函数(RBF)和支持向量机(SVM)能够从捕获的挥杆数据中得出推论,这些数据将球轨迹与挥杆平面的变化联系在一起(总体分类为87%)。所获得的挥杆飞机计算机模型推论,数据分析和通用数据导出实用程序的实现概念支持运动机能学,高尔夫教练,告知俱乐部装备,高尔夫制造技术,并展示了体育科学,增强教练,普适计算的新的跨学科集成,计算智能以及专家系统的应用,以增加运动,伤害预防/康复和高尔夫相关数据集的可用性。 (C)2016 Elsevier Ltd.保留所有权利。

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