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Estimation Of Joint Angle From Ground Reaction Force In Human Gait

机译:从人体步态的地面反作用力估计关节角

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Current research in human biomechanics is trending towards machine learning based gait parameter estimations. This work is a proof of concept in using Artificial Neural Networks (ANNs) to estimate lower limb kinematics from foot kinetics. In this study, we present a three-layer Feed Forward Neural Network (FFNN) to estimate ankle angles from Ground Reaction Forces (GRFs). GRFs are measured from instrumented foot insoles (MOTICON) while ankle angles are measured using an optical motion camera system. Salient input features and target outputs for the ANN are selected based on priori knowledge of five gait event occurrences at its pre-defined gait intervals. These five main gait events are; Heel Strike (HS), Foot Flat (FF), Mid Stance (MS), Heel Off (HO) and Toe Off (TO). Results indicate high correlations between estimated and its ground truth angles (NRMSE 0.94). The result from this study shows the possibilities of modelling a dual-purpose foot insole that can measure GRFs while estimating lower limb angles. This will open up countless opportunities for outdoor gait monitoring during acts of daily living.
机译:人类生物力学的当前研究正朝着基于机器学习的步态参数估计的趋势发展。这项工作是使用人工神经网络(ANN)从足部动力学估计下肢运动学方面的概念证明。在这项研究中,我们提出了一个三层前馈神经网络(FFNN)从地面反作用力(GRF)估计踝关节角度。 GRF是从脚掌内底(MOTICON)测量的,而踝角是使用光学运动摄像系统测量的。基于对五种步态事件发生的先验知识,以其预定的步态间隔选择ANN的显着输入特征和目标输出。这五个主要的步态事件是:脚跟打击(HS),足部扁平(FF),中级姿势(MS),脚跟脱(HO)和脚趾脱(TO)。结果表明,估计的真角与地面真角之间存在高度相关性(NRMSE 0.94)。这项研究的结果表明,有可能对两用的鞋垫进行建模,该鞋垫可以在估计下肢角度的同时测量GRF。这将为日常生活中的户外步态监控提供无数的机会。

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