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基于局部周期性估计的惯性信号稳健步幅分割

Robust Stride Segmentation of Inertial Signals Based on Local Cyclicity Estimation.

作者信息

Šprager Sebastijan, Jurič Matjaž B

出版信息

Sensors (Basel). 2018 Apr 4;18(4):1091. doi: 10.3390/s18041091.

Abstract

A novel approach for stride segmentation, gait sequence extraction, and gait event detection for inertial signals is presented. The approach operates by combining different local cyclicity estimators and sensor channels, and can additionally employ a priori knowledge on the fiducial points of gait events. The approach is universal as it can work on signals acquired by different inertial measurement unit (IMU) sensor types, is template-free, and operates unsupervised. A thorough evaluation was performed with two datasets: our own collected FRIgait dataset available for open use, containing long-term inertial measurements collected from 57 subjects using smartphones within the span of more than one year, and an FAU eGait dataset containing inertial data from shoe-mounted sensors collected from three cohorts of subjects: healthy, geriatric, and Parkinson’s disease patients. The evaluation was performed in controlled and uncontrolled conditions. When compared to the ground truth of the labelled FRIgait and eGait datasets, the results of our evaluation revealed the high robustness, efficiency (F-measure of about 98%), and accuracy (mean absolute error MAE in about the range of one sample) of the proposed approach. Based on these results, we conclude that the proposed approach shows great potential for its applicability in procedures and algorithms for movement analysis.

摘要

本文提出了一种用于惯性信号的步幅分割、步态序列提取和步态事件检测的新方法。该方法通过组合不同的局部周期性估计器和传感器通道来运行,并且可以额外利用关于步态事件基准点的先验知识。该方法具有通用性,因为它可以处理由不同类型的惯性测量单元(IMU)传感器采集的信号,无需模板,且无监督运行。我们使用两个数据集进行了全面评估:一个是我们自己收集的可公开使用的FRIgait数据集,其中包含在一年多时间内使用智能手机从57名受试者收集的长期惯性测量数据;另一个是FAU eGait数据集,包含从三组受试者(健康、老年和帕金森病患者)的鞋载传感器收集的惯性数据。评估在受控和非受控条件下进行。与标记的FRIgait和eGait数据集的地面真值相比,我们的评估结果显示了所提出方法的高鲁棒性、效率(F值约为98%)和准确性(平均绝对误差MAE约在一个样本范围内)。基于这些结果,我们得出结论,所提出的方法在运动分析的程序和算法中具有很大的应用潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/591f/5948565/290359a6ccd6/sensors-18-01091-g001.jpg

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