一种利用可穿戴式肌电传感器测量行走步幅的行人航位推算算法

Qian Wang, Xu Zhang, Xiang Chen, Ruizhi Chen, Wei Chen, Yuwei Chen
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引用次数: 27

摘要

在个人导航中,基于低成本的自包含传感器的行人航位推算(PDR)系统利用了人类行走的运动学,非常适合室内使用和GPS信号退化或不可用的城市山谷。考虑到肌电图(electromyography, EMG)是测量人体肌肉收缩产生的电位,可以反映人体运动过程中的肌肉活动,因此可以利用这种生物医学信号来捕捉PDR中人体的行走特征。本文中提出的工作是我们在进一步开发一种新颖而强大的PDR解决方案的试点研究的连续步骤,该解决方案使用可穿戴式肌电图传感器来测量步行步数。我们的PDR解决方案包括基于肌电图的活动分类、步长检测和步长估计,以及根据双轴数字罗盘的航向计算位置。为了避免步长误检,利用从原始肌电数据中提取的样本熵特征作为隐马尔可夫模型分类器,对正常行走和静止站立两种活动进行分类。研究了一些肌电统计参数,建立了优化步长模型。为了验证该方法的可行性和有效性,由一名男性测试者在两个实验阶段进行了多次现场测试,以证明使用肌电图测量步行步数的方法的有效性和实用性。此外,结果表明,PDR解决方案的性能与开放天空环境下的GPS相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel pedestrian dead reckoning algorithm using wearable EMG sensors to measure walking strides
In personal navigation, pedestrian dead reckoning (PDR) systems based on low-cost self-contained sensors exploit the kinematics of human walking, and are well suited for indoor use and in urban canyons where GPS signals are degraded or not available. Considering the electromyography (EMG), which measures electrical potentials generated by muscle contractions from human body, would reflect the muscle activities during human locomotion, this kind of biomedical signal can be utilized to capture human walking characteristics in PDR. The work presented in this paper is the consecutive step of our pilot studies in further developing a novel and robust PDR solution using wearable EMG sensors to measure walking steps. Our PDR solution includes the EMG-based activity classification, step occurrence detection, and step length estimation, as well as the position calculation with the heading from a two-axis digital compass. To avoid step misdetection, two kinds of activities: walking normally and standing still, are classified via the hidden Markov model classifier fed by the sample entropy features extracted from the raw EMG data. Some EMG statistical parameters are also investigated to establish the optimized step length model. To validate the feasibility and effectiveness of this method, several field tests were conducted by a male tester in two experimental sessions, to demonstrate the effectiveness and practicability of the method using EMG to measure walking steps. Furthermore, the results indicate the performance of the PDR solution is comparable to that of the GPS under open-sky environments.
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