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首页> 外文期刊>IEEE transactions on neural systems and rehabilitation engineering >Accurate Ambulatory Gait Analysis in Walking and Running Using Machine Learning Models
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Accurate Ambulatory Gait Analysis in Walking and Running Using Machine Learning Models

机译:使用机器学习模型在步行和跑步中进行准确的步行步态分析

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Wearable sensors have been proposed as alternatives to traditional laboratory equipment for low-cost and portable real-time gait analysis in unconstrained environments. However, the moderate accuracy of these systems currently limits their widespread use. In this paper, we show that support vector regression (SVR) models can be used to extract accurate estimates of fundamental gait parameters (i.e., stride length, velocity, and foot clearance), from custom-engineered instrumented insoles (SportSole) during walking and running tasks. Additionally, these learning-based models are robust to inter-subject variability, thereby making it unnecessary to collect subject-specific training data. Gait analysis was performed in N=14 healthy subjects during two separate sessions, each including 6-minute bouts of treadmill walking and running at different speeds (i.e., 85% and 115% of each subject's preferred speed). Gait metrics were simultaneously measured with the instrumented insoles and with reference laboratory equipment. SVR models yielded excellent intraclass correlation coefficients (ICC) in all the gait parameters analyzed. Percentage mean absolute errors (MAE%) in stride length, velocity, and foot clearance obtained with SVR models were 1.37%+/- 0.49%, 1.23%+/- 0.27%, and 2.08%+/- 0.72% for walking, 2.59%+/- 0.64%, 2.91%+/- 0.85%, and 5.13%+/- 1.52% for running, respectively. These findings provide evidence that machine learning regression is a promising new approach to improve the accuracy of wearable sensors for gait analysis.
机译:对于在不受限制的环境中进行低成本和便携式实时步态分析的可穿戴传感器,已经提出了其作为传统实验室设备的替代方案。但是,这些系统的中等精度目前限制了它们的广泛使用。在本文中,我们证明了支持向量回归(SVR)模型可用于在步行和骑行过程中从定制设计的仪器化鞋垫(SportSole)中提取基本步态参数(即步幅,速度和脚部间隙)的准确估算值。运行任务。此外,这些基于学习的模型对于科目间的差异性很强,因此不必收集特定于主题的训练数据。在两个单独的阶段中对N = 14名健康受试者进行了步态分析,每个阶段都包括跑步机以不同速度(即每个受试者首选速度的85%和115%)进行6分钟的跑步和跑步。使用仪器内底和参考实验室设备同时测量步态指标。在分析的所有步态参数中,SVR模型均产生出色的类内相关系数(ICC)。使用SVR模型获得的步幅,速度和脚间隙的平均绝对误差(MAE%)的百分比是行走时为2.59、1.37%+ /-0.49%,1.23%+ /-0.27%和2.08%+ /-0.72%运行时分别为%+ /-0.64%,2.91%+ /-0.85%和5.13%+ /-1.52%。这些发现提供了证据,表明机器学习回归是一种提高步态分析可穿戴式传感器准确性的有前途的新方法。

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