Kong Youngsun, Chon Ki
Annu Int Conf IEEE Eng Med Biol Soc. 2019 Jul;2019:3253-3256. doi: 10.1109/EMBC.2019.8857633.
An instantaneous heart rate tracking method is presented to estimate beat-to-beat heart rates from wearable photoplethysmographic (PPG) sensors that are affected by nonstationary motion artifacts. Many state-of-the-art heart rate tracking methods estimate heart rates using an 8-second average instead of the instantaneous heart rates which especially fluctuate during exercises. In this paper, our novel technique showed accurate heart rate estimation from PPG signals acquired from wearable wrist and forehead devices which are affected by motion artifacts especially when subjects were running on a treadmill. The proposed method consists of three parts: 1) time-frequency spectrum estimation of PPG and accelerometer signals, 2) motion artifact removal by subtraction of the time-frequency spectra of the accelerometer signals from the PPG signals, and 3) postprocessing to reject remnant motion artifact affected heart rates followed by interpolation of removed heartbeats using a cubic spline approach. We present preliminary results compared with one of the most accurate state-of-the-art techniques [12]. The results were derived from two different datasets: IEEE Signal Processing Cup Challenge and our own dataset obtained from a wrist and a forehead PPG sensor, respectively, with subjects running on a treadmill. We obtained the average absolute error of 2.93 beats per minute and average relative error of 2.31 beats per minute, which are 121% and 119% improvement, respectively, when compared to the previously published algorithm [12].
提出了一种瞬时心率跟踪方法,用于从受非平稳运动伪影影响的可穿戴光电容积脉搏波描记法(PPG)传感器估计逐搏心率。许多最先进的心率跟踪方法使用8秒平均值来估计心率,而不是估计在运动期间尤其会波动的瞬时心率。在本文中,我们的新技术通过从受运动伪影影响的可穿戴手腕和额头设备采集的PPG信号中显示出准确的心率估计,尤其是当受试者在跑步机上跑步时。所提出的方法包括三个部分:1)PPG和加速度计信号的时频谱估计;2)通过从PPG信号中减去加速度计信号的时频谱来去除运动伪影;3)后处理以拒绝受残余运动伪影影响的心率,随后使用三次样条方法对去除的心跳进行插值。我们给出了与最准确的最先进技术之一[12]相比的初步结果。这些结果来自两个不同的数据集:IEEE信号处理杯挑战赛和我们自己分别从手腕和额头PPG传感器获得的数据集,受试者在跑步机上跑步。我们获得的平均绝对误差为每分钟2.93次心跳,平均相对误差为每分钟2.31次心跳,与之前发表的算法[12]相比,分别提高了121%和119%。