Improved human pulse peak estimation using derivative features for noncontact pulse transit time measurements

Mototaka Yoshioka, Kenta Murakami, Jun Ozawa
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引用次数: 7

Abstract

This paper proposes a method to estimate temporally accurate human pulse peaks for noncontact pulse transit time (PTT) measurements. The PTT is considered as a significant diagnostic index for conditions such as blood pressure and arterial stiffness; however, millisecond-order accuracy is required in the determination of each pulse peak. In this study, human pulse waveforms are obtained from wrist and ankle images taken using a webcam at 90 cm distance. In the proposed method, the waveform is smoothed using finite impulse response low-pass filtering that sustains the shape of the pulse waveform, and the phase delay is compensated. Then, features of the first-order derivative of the filtered waveform are used to estimate the pulse peaks. The interbeat intervals obtained from the peaks estimated by the proposed method closely coincided with those obtained from a contact-type photoplethysmogram sensor, yielding less absolute error than that obtained from a comparative method; thus, this confirms the improved temporal accuracy of the proposed method. The PTTs are calculated from the time differences between the estimated pulse peaks of the wrist and those of the ankle images. The benefit of accurate pulse peak estimation is demonstrated by investigating the relation between the PTT and blood pressure. The PTTs are correlated with blood pressure in ten human participants, and a high correlation coefficient of -0.88 was obtained, indicating a direct relation between these two measures.
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改进人类脉冲峰值估计的导数特征,用于非接触脉冲传递时间测量
本文提出了一种非接触脉冲传递时间(PTT)测量中人体脉冲峰值的时域精确估计方法。PTT被认为是血压和动脉僵硬等疾病的重要诊断指标;然而,在确定每个脉冲峰值时,需要毫秒级的精度。在这项研究中,使用网络摄像头在90厘米距离处拍摄的手腕和脚踝图像获得了人体脉冲波形。在该方法中,采用有限脉冲响应低通滤波对波形进行平滑,以保持脉冲波形的形状,并补偿相位延迟。然后,利用滤波后波形的一阶导数特征估计脉冲峰值。该方法估计的峰值间拍间隔与接触式光容积描记器的峰值间拍间隔非常接近,产生的绝对误差小于比较法;因此,这证实了所提出方法的时间精度的提高。ptt是根据腕部和踝关节图像估计的脉冲峰值之间的时间差来计算的。通过研究PTT和血压之间的关系,证明了准确的脉冲峰值估计的好处。在10名参与者中,ptt与血压相关,获得了-0.88的高相关系数,表明这两个指标之间存在直接关系。
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