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Evaluation of Inertial Sensor Configurations for Wearable Gait Analysis

机译:可穿戴步态分析的惯性传感器配置评估

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Gait analysis has potential use in various applications, such as health care, clinical rehabilitation, sport training, and pedestrian navigation. This paper addresses the problem of detecting gait events based on inertial sensors and body sensor networks (BSNs). Different methods have been presented for gait detection in the literature. Generally, straightforward rule-based methods involve a set of detection rules and associated thresholds, which are empirically predetermined and relatively brittle; whereas adaptive machine learning-based methods require a time-consuming training process and an amount of well-labeled data. This paper aims to investigate the effect of type, number and location of inertial sensors on gait detection, so as to offer some suggestions for optimal sensor configuration. Target gait events are detected using a hybrid adaptive method that combines a hidden Markov model (HMM) and a neural network (NN). Detection performance is evaluated with multi-subject gait data that are collected using foot-mounted inertial sensors. Experimental results show that angular rate hold the most reliable information for gait recognition during forward walking on level ground.
机译:步态分析具有各种应用的潜在用途,例如医疗保健,临床康复,运动培训和行人导航。本文解决了基于惯性传感器和体传感器网络(BSN)检测步态事件的问题。已经介绍了文献中的步态检测的不同方法。通常,基于直接的规则的方法涉及一组检测规则和相关阈值,其经验预先确定和相对脆弱;虽然自适应机器基于学习的方法需要耗时的培训过程和一定量的标记数据。本文旨在探讨惯性传感器类型,数量和位置对步态检测的影响,以便为最佳传感器配置提供一些建议。使用结合隐马尔可夫模型(HMM)和神经网络(NN)的混合自适应方法检测目标步态事件。通过使用脚安装的惯性传感器收集的多主题步态数据来评估检测性能。实验结果表明,角速率在前进级地面行走期间对步态识别最可靠的信息。

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