基于可穿戴传感器的7自由度上肢运动重建模型

Lorenzo Peppoloni, Alessandro Filippeschi, E. Ruffaldi, C. Avizzano
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引用次数: 50

摘要

在过去的几十年里,可穿戴运动跟踪系统因其在许多领域的有效性而获得了广泛的普及,从性能评估到人机交互。在这些方法中,基于惯性传感器的方法得到了广泛的探索。由于惯性传感器受到测量漂移的影响,它们需要其他传感器的辅助,因此需要传感器测量的融合。目前最常用的传感器融合技术是基于卡尔曼滤波的。特别地,由于大多数模型具有非线性的特点,我们采用了扩展卡尔曼滤波器(EKF)和无气味卡尔曼滤波器(UKF)。它们的目的往往是通过估计肢体的方向来重建人体的运动,涉及到人体的运动学来约束肢体的相对运动。这些模型通常忽略了人类上肢的部分自由度,尤其是在模拟肱骨相对于胸部的运动时。在本文中,我们提出了一种新的7自由度模型,它代表了建模精度和复杂性之间的权衡。特别地,我们建立了人类肩胛骨的模型,同时考虑了肱骨头的抬高和由于肩胛骨和锁骨运动而引起的收缩。该模型利用惯性传感器测量,通过无气味卡尔曼滤波来重建人体运动。首先通过基于光学跟踪系统的重构来验证系统的性能。其次,对从7点模型中提取的5点模型进行性能检验,并用于估计将模型扩展到7点后得到的位置估计的改进效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel 7 degrees of freedom model for upper limb kinematic reconstruction based on wearable sensors
Wearable motion tracking systems have gained large popularity in the last decades because of their effectiveness in many fields, from performance assessment to human-robot interaction. Among all the approaches, those based on inertial sensors have been widely explored. Since inertial sensors are affected by measurements drift, they need to be aided by other sensors, thus requiring sensor measurements to be fused. The most used sensor fusion techniques are based on Kalman filter. In particular, the Extended Kalman Filter (EKF) and the Unscented Kalman Filter (UKF) are used because of the non linearity characterizing most of the models. They often aim at reconstructing human motion by estimating limbs orientation, involving human's kinematics to constrain relative motion of the limbs. These models often neglect part of the degrees of freedom (DoFs) that characterize human upper limbs, especially when modeling humerus motion with respect to the chest. In this paper we present a novel 7 DoFs model which represents a trade-off between modeling accuracy and complexity for the human upper limb. In particular, we model the human shoulder girdle taking into account also the humerus head's elevation and the retraction due to the scapula's and the clavicle's motions. The model exploits inertial sensors measurements by means of an Unscented Kalman filter to reconstruct human movements. The system performance is validated firstly against a reconstruction based on an optical tracking system. Secondly, the 5 DoFs model extracted form the 7 DoFs one was checked to have state of the art performance and used to estimate the improvement of position estimation that are obtained by extending the model to 7 DoFs.
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