首页> 外文会议>IEEE International Workshop on Metrology for Industry 4.0 and IoT >Respiratory Rate Estimation During Walking/Running Activities Using Principal Components Estimated from Signals Recorded by a Smart Garment Embedding Piezoresistive Sensors
【24h】

Respiratory Rate Estimation During Walking/Running Activities Using Principal Components Estimated from Signals Recorded by a Smart Garment Embedding Piezoresistive Sensors

机译:使用由嵌入式传感器记录的信号估计的主要组件的步行/运行活动期间的呼吸速率估计

获取原文

摘要

The aim of this work was to investigate the use Principal Component Analysis (PCA) applied to signals recorded by 4 textile piezoresistive sensors embedded within a smart garment (SG) to estimate respiratory rate (RR) during walking/running tasks. To this aim, we enrolled 6 subjects who were asked to perform 7 trials on a treadmill at different speeds: one static condition (quiet breathing at rest), three walking trials at 1.6 km/h, 3.0 km/h and 5.0 km/h, and three running trials at 8.0 km/h, 10.0 km/h and 12.0 km/h. We recorded breathing activity using both the SG embedding 4 piezoresistive sensors, located on lower thorax and abdomen, and a reference flowmeter. We estimated RR using three different signals from SG: i) the average along sensors of the band-pass filtered piezoresistive signals (Xbp), the first principal component (P1st) and the average along components of the sub-set of principal components needed to obtain an accounted variance of 0.95 (P95). On the basis of the RR computed with the reference flowmeter, we obtained that, on average, the error committed relying on P95 is 1.02 bpm, the error obtained considering Xbp is 1.04 bpm and the error obtained using P1st is 1.13 bpm. However, the use of P95 allows obtaining a better estimation at high speed tasks than both Xbp and P1st. This finding may suggest that the use of PCA and, specifically, of the signal obtained as the average along all those components required to obtain an accounted variance of 0.95 may be conveniently used to selectively discard breathing-unrelated components, thus improving the estimation of RR.
机译:这项工作的目的是研究应用于嵌入智能服装(SG)内的4个纺织品压阻传感器记录的信号的使用主成分分析(PCA),以在步行/运行任务期间估算呼吸速率(RR)。为此目的,我们注册了6名受试者,被要求以不同的速度执行7次跑步机的试验:一种静态条件(休息安静呼吸),3.6公里/小时,3.0公里/小时和5.0公里/小时,以及8.0 km / h,10.0 km / h和12.0 km / h的三次运行试验。我们使用位于下胸部和腹部的SG嵌入4个压电传感器以及参考流量计进行了呼吸活动,以及参考流量计。我们使用SG的三种不同信号估计RR:i)沿着带通滤波的压阻信号(XBP)的平均传感器,第一主组件(P1ST)和沿着所需的主组件的子组的组件的平均值获得0.95(p95)的占核算方差。在使用参考流量计计算的RR的基础上,我们获得了平均而依赖于P95的误差为1.02 BPM,考虑XBP获得的错误是1.04 BPM,使用P1ST获得的错误是1.13 BPM。然而,P95的使用允许在高速任务中获得比XBP和P1ST的高速任务更好的估计。该发现可能表明,使用PCA和具体地,作为获得所需的所有这些组件的平均值的信号可以方便地用于选择性地丢弃呼吸无关的组件,从而改善RR的估计。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号