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Robust and computationally efficient approach for Heart Rate monitoring using photoplethysmographic signals during intensive physical excercise

机译:在体育锻炼中使用光电容积描记仪信号进行心率监测的稳健且计算效率高的方法

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摘要

Photoplethysmography (PPG) at the wrist can be used as a non-invasive technique for estimating the Heart Rate (HR). However, Motion Artifacts (MA) impede this estimation of the HR especially when the subject performs intensive physical exercise. This paper describes the implementation of a fast algorithm based on a statistical approach for extracting the HR from such MA corrupted PPG. Data-sets contain PPG signals with accelerometer data in 3-dimensions of subjects who were performing various forearm and upper arm activities. Simultaneously recorded Electrocardiogram (ECG) was used to verify the algorithm. The algorithm first de-noises the signal followed by a focus reduction in the spectrum and then peak tracking. The proposed algorithm resulted in an overall average-absolute-error of 1.5926 Beats Per Minute (BPM). The Bland-Altman was used to compare ECG derived HR and PPG derived HR where Limit of Agreement (LOA) was ±7 BPM. Also, this algorithm gives a great efficiency in time and robustness to track the HR on-the-go.
机译:腕部的光电容积描记术(PPG)可用作估计心率(HR)的非侵入性技术。但是,运动伪影(MA)妨碍了对HR的估计,尤其是在对象进行剧烈的体育锻炼时。本文介绍了一种基于统计方法的快速算法的实现,该算法可从此类MA损坏的PPG中提取HR。数据集包含PPG信号以及在执行各种前臂和上臂活动的3维对象中的加速度计数据。同时记录心电图(ECG)用于验证该算法。该算法首先对信号进行消噪,然后在频谱中进行聚焦减小,然后进行峰值跟踪。所提出的算法导致平均平均绝对误差为1.5926次每分钟节拍(BPM)。使用Bland-Altman来比较ECG衍生的HR和PPG衍生的HR(协议极限(LOA)为±7 BPM)。而且,该算法在跟踪人力资源时提供了很高的时间效率和鲁棒性。

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