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Intelligent integrated wearable sensing mechanism for vertical jump height prediction in female netball players

机译:智能集成可穿戴传感机制,用于预测女子无板篮球运动员的垂直跳高

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Vertical jump (VJ) height is a fundamental performance analysis parameter in several sports involving frequent jump-landing maneuvers such as netball. Recent studies have largely examined performance parameters associated with vertical jump height (VJH) in isolation from each other. This study presents an investigation into the relationship between integrated performance parameters (IPP) and VJH during single-leg (VJSL) and double-leg (VJDL) vertical jump tests. IPP considered include; electromyography (EMG) activity of eight lower extremity (LE) muscles, 3D Kinematics of the knee and ankle joints, body height (BH), reach height (RH), and Jump duration (JT). Thirteen healthy national female netball players participated in this study. Each subject performed VJSL and VJDL in three trials while simultaneously and synchronously recording their LE-EMG activity, 3D kinematics, and VJH in each jump trial. LE-EMG activity acquisition was through wirelessly transmitting BioRadio units (CleveMed Inc. USA), while 3D kinematics were obtained through a six-3D marker-based motion capture camera system (Qualisys Inc. Sweden). VJH reading was obtained from a vertec device (Power Systems Inc. USA). A total of 22 IPP were extracted from raw data of both VJSL tests (i.e VJSL Right-Leg (VJSLR), and VJSL Left-Leg (VJSLL)), while 44 IPP were extracted from raw data of VJDL. The relationship between the reduced datasets' parameters and response variable (VJH) was then modeled using Multilayer Perceptron Feed Forward Neural Networks (FFNNs). Significant features were further selected through stepwise regression analysis. Results showed that FFNNs trained with Scaled conjugate gradient back-propagation (SCG) algorithm achieved the best VJH prediction with accuracy of 97.39% for VJSLL, 94.52% for VJSLR, and of 96.74% for VJDL. These results demonstrate that the integration of 3D Kinematics and EMG using wearable sensors interfaced with motion capture system for IPP, has led to more accurate prediction of VJH. Thus, this serves as quantifiable feedback to coaches and players for performance enhancement as well as injury prevention in jump landing tasks investigated.
机译:垂直跳高(VJ)是一些运动中的一项基本性能分析参数,涉及到频繁的跳着陆动作,例如无板篮球。最近的研究在很大程度上隔离了与垂直跳高(VJH)相关的性能参数。这项研究提出了对单腿(VJSL)和双腿(VJDL)垂直跳跃测试期间综合性能参数(IPP)和VJH之间关系的调查。 IPP被认为包括;八个下肢(LE)肌肉的肌电图(EMG)活动,膝关节和踝关节的3D运动学,体高(BH),到达身高(RH)和跳跃持续时间(JT)。十三名健康的国家女子无板篮球运动员参加了这项研究。每个受试者在三个试验中均执行VJSL和VJDL,同时在每个跳跃试验中同时并同步记录其LE-EMG活动,3D运动学和VJH。 LE-EMG活动获取是通过无线传输BioRadio装置(美国CleveMed Inc.)获得的,而3D运动学则是通过基于6-3D标记的运动捕捉相机系统(Qualisys Inc. Sweden)获得的。 VJH读数是从vertec设备(美国Power Systems Inc.)获得的。从两个VJSL测试的原始数据(即VJSL右腿(VJSLR)和VJSL左腿(VJSLL))的原始数据中总共提取了22个IPP,而从VJDL的原始数据中提取了44个IPP。然后使用多层感知器前馈神经网络(FFNN)对简化数据集的参数与响应变量(VJH)之间的关系进行建模。通过逐步回归分析进一步选择了重要特征。结果表明,使用比例共轭梯度反向传播(SCG)算法训练的FFNN达到了最佳的VJH预测,VJSLL的准确性为97.39%,VJSLR的准确性为94.52%,VJDL的准确性为96.74%。这些结果表明,使用可穿戴式传感器与IPP运动捕捉系统接口的3D运动学和EMG的集成,可以更准确地预测VJH。因此,这可以作为对教练和球员的量化反馈,以提高表现并在所研究的着陆任务中防止伤害。

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