Frick Eric, Rahmatalla Salam
Center for Computer-Aided Design, College of Engineering, The University of Iowa, Iowa City, IA 52242, USA.
Department of Civil and Environmental Engineering, College of Engineering, The University of Iowa, Iowa City, IA 52242, USA.
Sensors (Basel). 2018 Apr 4;18(4):1089. doi: 10.3390/s18041089.
The biomechanical models used to refine and stabilize motion capture processes are almost invariably driven by joint center estimates, and any errors in joint center calculation carry over and can be compounded when calculating joint kinematics. Unfortunately, accurate determination of joint centers is a complex task, primarily due to measurements being contaminated by soft-tissue artifact (STA). This paper proposes a novel approach to joint center estimation implemented via sequential application of single-frame optimization (SFO). First, the method minimizes the variance of individual time frames’ joint center estimations via the developed variance minimization method to obtain accurate overall initial conditions. These initial conditions are used to stabilize an optimization-based linearization of human motion that determines a time-varying joint center estimation. In this manner, the complex and nonlinear behavior of human motion contaminated by STA can be captured as a continuous series of unique rigid-body realizations without requiring a complex analytical model to describe the behavior of STA. This article intends to offer proof of concept, and the presented method must be further developed before it can be reasonably applied to human motion. Numerical simulations were introduced to verify and substantiate the efficacy of the proposed methodology. When directly compared with a state-of-the-art inertial method, SFO reduced the error due to soft-tissue artifact in all cases by more than 45%. Instead of producing a single vector value to describe the joint center location during a motion capture trial as existing methods often do, the proposed method produced time-varying solutions that were highly correlated ( > 0.82) with the true, time-varying joint center solution.
用于优化和稳定运动捕捉过程的生物力学模型几乎总是由关节中心估计驱动,并且关节中心计算中的任何误差都会延续下去,在计算关节运动学时可能会被放大。不幸的是,准确确定关节中心是一项复杂的任务,主要原因是测量会受到软组织伪影(STA)的干扰。本文提出了一种通过逐帧优化(SFO)的顺序应用来实现关节中心估计的新方法。首先,该方法通过开发的方差最小化方法最小化各个时间帧的关节中心估计的方差,以获得准确的总体初始条件。这些初始条件用于稳定基于优化的人体运动线性化,从而确定随时间变化的关节中心估计。通过这种方式,受STA干扰的人体运动的复杂非线性行为可以被捕获为一系列连续的独特刚体实现,而无需复杂的分析模型来描述STA的行为。本文旨在提供概念验证,所提出的方法在能够合理应用于人体运动之前必须进一步发展。引入了数值模拟来验证和证实所提出方法的有效性。与一种先进的惯性方法直接比较时,SFO在所有情况下都将软组织伪影导致的误差降低了45%以上。与现有方法通常在运动捕捉试验期间产生单个向量值来描述关节中心位置不同,所提出的方法产生了与真实的随时间变化的关节中心解高度相关(>0.82)的随时间变化的解。