A human-like walking gait simulator for estimation of selected gait parameters

M. Abid, Valérie Renaudin, T. Robert, Y. Aoustin, E. Carpentier
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Abstract

Pedestrian dead reckoning (PDR) is one of the most employed strategies to process inertial signals collected with a handheld device for autonomous indoor positioning. This strategy is based on step length models that usually combine step characteristics with some physiological parameters. These models are calibrated with experimental data for each user. However, many physiological conditions are affecting the walking gait even for steady walking. Therefore, frequent calibration is needed to cope with walking pattern variations. Moreover, PDR models are not adapted to high walking velocities and to the specific walking patterns of some populations like elderly people and pathological cases. In light of these limitations, the modeling of human walking, which considers the induced arm swinging behavior, is needed for improving self-contained inertial indoor navigation. In this paper, a human-like walking model is developed in order to represent and study the correlations between the hand acceleration and gait characteristics. Experimental data were collected from motion capture experiments on one healthy subject in order to validate the model. Results show that the model fitted to the test subject reproduces the walking features found in experiments, as well as the same tendencies in function of the walking velocity.
一种仿人步态模拟器,用于估计选定的步态参数
行人航位推算(PDR)是对手持设备采集的惯性信号进行处理的常用策略之一。该策略基于步长模型,该模型通常将步长特征与一些生理参数结合起来。这些模型是用每个用户的实验数据校准的。然而,即使是平稳行走,许多生理条件也会影响步行步态。因此,需要频繁的校准来应对行走模式的变化。此外,PDR模型不适应高步行速度和某些人群(如老年人和病理病例)的特定步行模式。鉴于这些局限性,需要对人体行走进行建模,考虑引起的手臂摆动行为,以改进自包含惯性室内导航。为了描述和研究手加速度与步态特征之间的相关性,本文建立了类人步行模型。为了验证模型的有效性,我们从一个健康受试者的动作捕捉实验中收集了实验数据。结果表明,拟合的模型再现了实验中发现的行走特征,并具有与行走速度函数相同的趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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