Hindle Benjamin R, Keogh Justin W L, Lorimer Anna V
Faculty of Health Sciences and Medicine, Bond University, Gold Coast 4226, Australia.
Sports Performance Research Institute New Zealand (SPRINZ), AUT Millennium Institute, AUT University, Auckland 0632, New Zealand.
Appl Bionics Biomech. 2021 Mar 26;2021:6628320. doi: 10.1155/2021/6628320. eCollection 2021.
Inertial-based motion capture (IMC) has been suggested to overcome many of the limitations of traditional motion capture systems. The validity of IMC is, however, suggested to be dependent on the methodologies used to process the raw data collected by the inertial device. The aim of this technical summary is to provide researchers and developers with a starting point from which to further develop the current IMC data processing methodologies used to estimate human spatiotemporal and kinematic measures. The main workflow pertaining to the estimation of spatiotemporal and kinematic measures was presented, and a general overview of previous methodologies used for each stage of data processing was provided. For the estimation of spatiotemporal measures, which includes stride length, stride rate, and stance/swing duration, measurement thresholding and zero-velocity update approaches were discussed as the most common methodologies used to estimate such measures. The methodologies used for the estimation of joint kinematics were found to be broad, with the combination of Kalman filtering or complimentary filtering and various sensor to segment alignment techniques including anatomical alignment, static calibration, and functional calibration methods identified as being most common. The effect of soft tissue artefacts, device placement, biomechanical modelling methods, and ferromagnetic interference within the environment, on the accuracy and validity of IMC, was also discussed. Where a range of methods have previously been used to estimate human spatiotemporal and kinematic measures, further development is required to reduce estimation errors, improve the validity of spatiotemporal and kinematic estimations, and standardize data processing practices. It is anticipated that this technical summary will reduce the time researchers and developers require to establish the fundamental methodological components of IMC prior to commencing further development of IMC methodologies, thus increasing the rate of development and utilisation of IMC.
基于惯性的运动捕捉(IMC)被认为可以克服传统运动捕捉系统的许多局限性。然而,IMC的有效性被认为取决于用于处理惯性设备收集的原始数据的方法。本技术总结的目的是为研究人员和开发人员提供一个起点,以便进一步开发当前用于估计人体时空和运动学测量的IMC数据处理方法。介绍了与时空和运动学测量估计相关的主要工作流程,并对数据处理各阶段以前使用的方法进行了概述。对于时空测量的估计,包括步长、步频和站立/摆动持续时间,讨论了测量阈值处理和零速度更新方法,作为估计此类测量最常用的方法。发现用于关节运动学估计的方法多种多样,卡尔曼滤波或互补滤波与各种传感器到节段对齐技术(包括解剖学对齐、静态校准和功能校准方法)的组合被认为是最常见的。还讨论了软组织伪影、设备放置、生物力学建模方法以及环境中的铁磁干扰对IMC准确性和有效性的影响。虽然以前已经使用了一系列方法来估计人体时空和运动学测量,但仍需要进一步发展以减少估计误差、提高时空和运动学估计的有效性并规范数据处理实践。预计本技术总结将减少研究人员和开发人员在开始进一步开发IMC方法之前确定IMC基本方法组件所需的时间,从而提高IMC的开发和利用率。