Cerfoglio Serena, Galli Manuela, Tarabini Marco, Bertozzi Filippo, Sforza Chiarella, Zago Matteo
Dipartimento di Elettronica, Informazione e Bioingegneria, Politecnico di Milano, 20133 Milano, Italy.
E4Sport Laboratory, Politecnico di Milano, 23900 Lecco, Italy.
Sensors (Basel). 2021 Nov 19;21(22):7709. doi: 10.3390/s21227709.
Nowadays, the use of wearable inertial-based systems together with machine learning methods opens new pathways to assess athletes' performance. In this paper, we developed a neural network-based approach for the estimation of the Ground Reaction Forces (GRFs) and the three-dimensional knee joint moments during the first landing phase of the Vertical Drop Jump. Data were simultaneously recorded from three commercial inertial units and an optoelectronic system during the execution of 112 jumps performed by 11 healthy participants. Data were processed and sorted to obtain a time-matched dataset, and a non-linear autoregressive with external input neural network was implemented in Matlab. The network was trained through a train-test split technique, and performance was evaluated in terms of Root Mean Square Error (RMSE). The network was able to estimate the time course of GRFs and joint moments with a mean RMSE of 0.02 N/kg and 0.04 N·m/kg, respectively. Despite the comparatively restricted data set and slight boundary errors, the results supported the use of the developed method to estimate joint kinetics, opening a new perspective for the development of an in-field analysis method.
如今,可穿戴惯性系统与机器学习方法的结合为评估运动员的表现开辟了新途径。在本文中,我们开发了一种基于神经网络的方法,用于估计垂直纵跳首次着地阶段的地面反作用力(GRFs)和三维膝关节力矩。在11名健康参与者进行的112次跳跃过程中,同时从三个商用惯性单元和一个光电系统记录数据。对数据进行处理和分类以获得时间匹配的数据集,并在Matlab中实现了具有外部输入的非线性自回归神经网络。该网络通过训练-测试分割技术进行训练,并根据均方根误差(RMSE)评估性能。该网络能够分别以0.02 N/kg和0.04 N·m/kg的平均RMSE估计GRFs和关节力矩的时间进程。尽管数据集相对有限且存在轻微边界误差,但结果支持使用所开发的方法来估计关节动力学,为现场分析方法的开发开辟了新的视角。