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一种用于矢状面对称运动学和动力学最优估计的约束扩展卡尔曼滤波器。

A constrained extended Kalman filter for the optimal estimate of kinematics and kinetics of a sagittal symmetric exercise.

作者信息

Bonnet V, Dumas R, Cappozzo A, Joukov V, Daune G, Kulić D, Fraisse P, Andary S, Venture G

机构信息

University of Paris-Est Créteil, Laboratory of Image, Signal and Intelligent Systems, LISSI, France.

Univ Lyon, Université Claude Bernard Lyon 1, IFSTTAR, UMR_T9406, LBMC, F69622 Lyon, France; Interuniversity Centre of Bioengineering of the Human Neuromusculoskeletal System, Università degli Studi di Roma "Foro Italico", Italia.

出版信息

J Biomech. 2017 Sep 6;62:140-147. doi: 10.1016/j.jbiomech.2016.12.027. Epub 2016 Dec 29.

DOI:10.1016/j.jbiomech.2016.12.027
PMID:28069162
Abstract

This paper presents a method for real-time estimation of the kinematics and kinetics of a human body performing a sagittal symmetric motor task, which would minimize the impact of the stereophotogrammetric soft tissue artefacts (STA). The method is based on a bi-dimensional mechanical model of the locomotor apparatus the state variables of which (joint angles, velocities and accelerations, and the segments lengths and inertial parameters) are estimated by a constrained extended Kalman filter (CEKF) that fuses input information made of both stereophotogrammetric and dynamometric measurement data. Filter gains are made to saturate in order to obtain plausible state variables and the measurement covariance matrix of the filter accounts for the expected STA maximal amplitudes. We hypothesised that the ensemble of constraints and input redundant information would allow the method to attenuate the STA propagation to the end results. The method was evaluated in ten human subjects performing a squat exercise. The CEKF estimated and measured skin marker trajectories exhibited a RMS difference lower than 4mm, thus in the range of STAs. The RMS differences between the measured ground reaction force and moment and those estimated using the proposed method (9N and 10Nm) were much lower than obtained using a classical inverse dynamics approach (22N and 30Nm). From the latter results it may be inferred that the presented method allows for a significant improvement of the accuracy with which kinematic variables and relevant time derivatives, model parameters and, therefore, intersegmental moments are estimated.

摘要

本文提出了一种用于实时估计人体进行矢状面对称运动任务时的运动学和动力学的方法,该方法将使立体摄影测量软组织伪影(STA)的影响最小化。该方法基于运动装置的二维力学模型,其状态变量(关节角度、速度和加速度,以及节段长度和惯性参数)由约束扩展卡尔曼滤波器(CEKF)估计,该滤波器融合了立体摄影测量和测力测量数据组成的输入信息。使滤波器增益饱和以获得合理的状态变量,并且滤波器的测量协方差矩阵考虑了预期的STA最大幅度。我们假设约束和输入冗余信息的集合将使该方法能够减弱STA传播到最终结果。该方法在十名进行深蹲运动的人体受试者中进行了评估。CEKF估计和测量的皮肤标记轨迹的均方根差低于4mm,因此在STA范围内。测量的地面反作用力和力矩与使用所提出的方法估计的结果之间的均方根差(9N和10Nm)远低于使用经典逆动力学方法获得的结果(22N和30Nm)。从后一个结果可以推断,所提出的方法能够显著提高运动学变量和相关时间导数、模型参数以及因此节段间力矩的估计精度。

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