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Predicting Athlete Ground Reaction Forces and Moments From Spatio-Temporal Driven CNN Models

机译:从时空驱动的CNN模型预测运动员的地面反作用力和力矩

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摘要

The accurate prediction of three-dimensional (3-D) ground reaction forces and moments (GRF/Ms) outside the laboratory setting would represent a watershed for on-field biomechanical analysis. To extricate the biomechanist's reliance on ground embedded force plates, this study sought to improve on an earlier partial least squares (PLS) approach by using deep learning to predict 3-D GRF/Ms from legacy marker based motion capture sidestepping trials, ranking multivariate regression of GRF/Ms from five convolutional neural network (CNN) models. In a possible first for biomechanics, tactical feature engineering techniques were used to compress space-time and facilitate fine-tuning from three pretrained CNNs, from which a model derivative of ImageNet called "CaffeNet" achieved the strongest average correlation to ground truth GRF/Ms r (F-mean) 0.9881 and r (M-mean) 0.9715 (rRMSE 4.31 and 7.04%). These results demonstrate the power of CNN models to facilitate real-world multivariate regression with practical application for spatio-temporal sports analytics.
机译:在实验室环境之外对三维(3-D)地面反作用力和弯矩(GRF / Ms)的准确预测将成为现场生物力学分析的分水岭。为了消除生物力学对地面嵌入式力板的依赖,本研究试图通过使用深度学习从基于传统标记的运动捕捉回避试验中预测3-D GRF / Ms,对多元回归进行排名,从而改进早期的偏最小二乘(PLS)方法来自五个卷积神经网络(CNN)模型的GRF / Ms。对于生物力学而言,可能首先采用了战术特征工程技术来压缩时空并促进对三个预训练的CNN的微调,由此ImageNet的模型衍生物“ CaffeNet”获得了与地面真实GRF的最强平均相关性/毫秒r(F均值)0.9881和r(M均值)0.9715(rRMSE 4.31和7.04%)。这些结果证明了CNN模型在时空体育分析中的实际应用具有促进现实世界多元回归的强大功能。

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