基于PPG信号同时提取脉搏和呼吸速率的预测编码用于能量受限的可穿戴设备

G. L. K. Reddy, M. Manikandan, N. V. L Narasimha Murty
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引用次数: 8

摘要

如今,可穿戴传感器或便携式设备在实时监测个人健康和健身方面具有很大的潜力,但它们受到电池电量有限的限制。因此,除了对数据进行压缩外,还需要探索轻量化信号处理技术,从光电体积脉搏图(PPG)信号中准确测量脉搏率(PR)和呼吸率(RR),以减少甚至消除设备频繁充电和更换电池的需要。本文提出了一种轻量级的统一预测编码框架,用于实现PPG信号的同步数据压缩、PR和RR提取。评价结果表明,所提出的统一框架可实现4:1的压缩比,节能52.38%。PR估计的平均绝对误差(MAE)为1.20 (bpm), Pearson系数为0.9829,Bland Altman比为5.37。RR估计的MAE结果为3.1(25 -75百分位数为1.5-5.6),优于现有方法。
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Predictive Coding with Simultaneous Extraction of Pulse and Respiration Rates from PPG Signal for Energy Constrained Wearable Devices
Nowadays, wearable sensors or portable devices have great potentials for real-time monitoring of health and fitness of an individual but they are constrained with limited battery power. Therefore, exploring lightweight signal processing technique is highly demanded for accurately measuring the pulse rate (PR) and respiration rate (RR) from the photoplethysmo-gram (PPG) signal in addition to the data compression in order to reduce or even eliminate the need for frequent charging of devices and replacement of batteries. In this paper, we present a lightweight unified predictive coding framework for achieving simultaneous data compression, PR and RR extraction from the PPG signal. Evaluation results demonstrate that the proposed unified framework can achieve compression ratio of 4:1 with energy saving of 52.38 %. For PR estimation, the method had mean absolute error (MAE) of 1.20 (bpm), Pearson coefficient of 0.9829 and Bland Altman ratio of 5.37. The RR estimation had promising MAE results of 3.1 (1.5-5.6 for 25th-75th percentiles) and outperforms the existing methods.
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