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Removal of Motion Artifacts in Photoplethysmograph Sensors during Intensive Exercise for Accurate Heart Rate Calculation Based on Frequency Estimation and Notch Filtering

机译:消除剧烈运动过程中光电容积描记器传感器中的运动伪像以基于频率估计和陷波滤波精确计算心率

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摘要

With photoplethysmograph (PPG) sensors showing increasing potential in wearable health monitoring, the challenging problem of motion artifact (MA) removal during intensive exercise has become a popular research topic. In this study, a novel method that combines heart rate frequency (HRF) estimation and notch filtering is proposed. The proposed method applies a cascaded adaptive noise cancellation (ANC) based on the least mean squares (LMS)-Newton algorithm for preliminary motion artifacts reduction, and further adopts special heart rate frequency tracking and correction schemes for accurate HRF estimation. Finally, notch filters are employed to restore the PPG signal with estimated HRF based on its quasi-periodicity. On an open source data set that features intensive running exercise, the proposed method achieves a competitive mean average absolute error (AAE) result of 0.92 bpm for HR estimation. The practical experiments are carried out with the PPG evaluation platform developed by ourselves. Under three different intensive motion patterns, a 0.89 bpm average AAE result is achieved with the average correlation coefficient between recovered PPG signal and reference PPG signal reaching 0.86. The experimental results demonstrate the effectiveness of the proposed method for accurate HR estimation and robust MA removal in PPG during intensive exercise.
机译:随着光电容积描记器(PPG)传感器在可穿戴式健康监测中显示出越来越高的潜力,在剧烈运动期间去除运动伪影(MA)的挑战性问题已成为热门的研究主题。在这项研究中,提出了一种结合心率频率(HRF)估计和陷波滤波的新方法。所提出的方法应用基于最小均方(LMS)-牛顿算法的级联自适应噪声消除(ANC)来进行初步的运动伪影减少,并进一步采用特殊的心率频率跟踪和校正方案来进行准确的HRF估计。最后,根据陷波滤波器的准周期,使用陷波滤波器恢复具有估计HRF的PPG信号。在具有密集跑步锻炼功能的开源数据集上,该方法获得的竞争性平均平均绝对误差(AAE)结果为0.92 bpm,可用于人力资源估算。实际实验是使用我们自己开发的PPG评估平台进行的。在三种不同的剧烈运动模式下,平均AAE结果达到0.89 bpm,恢复的PPG信号与参考PPG信号之间的平均相关系数达到0.86。实验结果证明了所提出的方法在剧烈运动过程中对PPG进行准确的HR估算和鲁棒的MA去除的有效性。

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