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首页> 外文期刊>IEEE Transactions on Consumer Electronics >Heart Rate Estimation of PPG Signals With Simultaneous Accelerometry Using Adaptive Neural Network Filtering
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Heart Rate Estimation of PPG Signals With Simultaneous Accelerometry Using Adaptive Neural Network Filtering

机译:使用自适应神经网络滤波同时加速度的PPG信号的心率估计

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摘要

Motion artifacts (MA) are potent sources of noise in wearable photoplethysmography (PPG) signals and can impact the estimation of heart rate (HR) of an individual. In this paper, a method using adaptive neural network filters (ANNF) is proposed for accurate estimation of HR using dual channel PPG signals and simultaneous, three - dimensional acceleration signals. The MA cancellation method using ANNF, utilizes acceleration data as input signal. The PPG signals serve as a target, while the error is the clean PPG signal. The proposed method also includes a post-processing smoothing and median filter which improves the HR estimation. The reason for this approach is that the acceleration signal in wearables are only within 3& x0025; of the ground truth value. Experimental results on datasets recorded from 12 subjects, publicly available, showed that the proposed algorithm achieves an absolute error of 1.15 beats per minute (BPM). The results also confirm that the proposed method is highly resilient to motion artifacts and maintains high accuracy for PPG estimation and compares favorably against other methods.
机译:运动伪影(MA)是可穿戴光学读物测量(PPG)信号中的有效噪声源,并且可以影响个体的心率(HR)的估计。本文采用了一种使用自适应神经网络滤波器(ANNF)的方法,用于使用双通道PPG信号和同时,三维加速信号精确估计HR。使用Annf的MA取消方法利用加速度数据作为输入信号。 PPG信号用作目标,而误差是清洁的PPG信号。所提出的方法还包括后处理平滑和中值滤波器,其改善了HR估计。这种方法的原因是穿戴设备中的加速信号仅在3和x0025内;实际值。从12个受试者记录的数据集的实验结果显示,所提出的算法达到每分钟1.15节拍的绝对误差(BPM)。结果还证实,该方法具有高度弹性的运动伪影,并保持PPG估计的高精度,并对其他方法进行比较。

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