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Missing Sample Recovery for Wireless Inertial Sensor-Based Human Movement Acquisition

机译:基于无线惯性传感器的人体运动采集的丢失样本恢复

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摘要

This paper presents a novel, practical, and effective routine to reconstruct missing samples from a time-domain sequence of wirelessly transmitted IMU data during high-level mobility activities. Our work extends previous approaches involving empirical mode decomposition (EMD)-based and auto-regressive (AR) model-based interpolation algorithms in two aspects: 1) we utilized a modified sifting process for signal decomposition into a set of intrinsic mode functions with missing samples, and 2) we expand previous AR modeling for recovery of audio signals to exploit the quasi-periodic characteristics of lower-limb movement during the modified Edgren side step test. To verify the improvements provided by the proposed extensions, a comparison study of traditional interpolation methods, such as cubic spline interpolation, AR model-based interpolations, and EMD-based interpolation is also made via simulation with real inertial signals recorded during high-speed movement. The evaluation was based on two performance criteria: Euclidian distance and Pearson correlation coefficient between the original signal and the reconstructed signal. The experimental results show that the proposed method improves upon traditional interpolation methods used in recovering missing samples.
机译:本文提出了一种新颖,实用,有效的例程,可以在高级移动活动中从无线传输的IMU数据的时域序列中重建丢失的样本。我们的工作从以下两个方面扩展了先前的方法,包括基于经验模式分解(EMD)和基于自回归(AR)模型的插值算法:1)我们利用改进的筛选过程将信号分解为一组缺少固有模式的函数样本,以及2)我们扩展了先前的AR模型来恢复音频信号,以在改良的Edgren侧步测试期间利用下肢运动的准周期性特征。为了验证提议的扩展所提供的改进,还通过对高速运动过程中记录的实际惯性信号进行仿真,对传统插值方法(例如三次样条插值,基于AR模型的插值和基于EMD的插值)进行了比较研究。 。评估基于两个性能标准:原始信号与重建信号之间的欧几里得距离和皮尔逊相关系数。实验结果表明,该方法对传统的插值方法进行了改进。

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