An Optimal Procedure for Stride Length Estimation Using Foot-Mounted Magneto-Inertial Measurement Units

Rachele Rossanigo, M. Caruso, F. Salis, S. Bertuletti, U. Croce, A. Cereatti
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引用次数: 6

Abstract

Stride length is often used to quantitatively evaluate human locomotion performance. Stride by stride estimation can be conveniently obtained from the signals recorded using miniaturized inertial sensors attached to the feet and appropriate algorithms for data fusion and integration. To reduce the detrimental drift effect, different algorithmic solutions can be implemented. However, the overall method accuracy is supposed to depend on the optimal selection of the parameters which are required to be set. This study aimed at evaluating the influence of the main parameters involved in well-established methods for stride length estimation. An optimization process was conducted to improve methods’ performance and preferable values for the considered parameters according to different walking speed ranges are suggested. A parametric solution is also proposed to target the methods on specific subjects’ gait characteristics. The stride length estimates were obtained from straight walking trials of five healthy volunteers and were compared with those obtained from a stereo-photogrammetric system. After parameters tuning, percentage errors for stride length were 1.9%, 2.5% and 2.6% for comfortable, slow, and fast walking conditions, respectively.
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一种基于足载磁惯性测量单元的步长估计优化方法
步长常用于定量评价人体运动表现。利用附着在脚上的小型惯性传感器记录的信号,通过适当的数据融合和集成算法,可以方便地获得步幅估计。为了减少有害的漂移效应,可以实现不同的算法解决方案。然而,总体方法的精度取决于所需要设置的参数的最佳选择。本研究旨在评估步幅估计方法中涉及的主要参数的影响。为了提高方法的性能,对所考虑的参数在不同步行速度范围内的取值进行了优化。针对特定受试者的步态特征,提出了一种参数化求解方法。步幅估算值来自5名健康志愿者的直线行走试验,并与立体摄影测量系统获得的结果进行了比较。在参数调整后,在舒适、缓慢和快速行走条件下,步长误差百分比分别为1.9%、2.5%和2.6%。
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