Abstract

Remote photoplethysmography (rPPG) is a method to measure cardiac activities without any contact sensors. Non-contact sensors include radar, laser, and digital cameras, and there have been wide developments regarding the measurement of rPPG signals using continuous face frames. However, non-contact sensors are quite sensitive to the subject’s motion, which causes motion artifacts. In this paper, two hypotheses are proposed: a) the motion artifacts are caused by unevenly reflected light due to the curvature of the subject’s face; and b) melanin and residuals in the continuous face frames are time-varying values whenever the subject’s movement is triggered. Adaptive noise cancellation based on recursive least square (ANS based on RLS) using the Lambert-Beer law and the hue–saturation–intensity (HSI) model were applied. The former is used for skin modeling, and the latter is used to reduce noises derived by the curvature of the face. Furthermore, the proposed algorithm is directly applied to two-dimensional continuous face frames and results in the rPPG signal and rPPG image, respectively. To evaluate proposed algorithm, two different experiments (e.g., static and dynamic situation) were conducted. Furthermore, in a study with 15 participants, the performances of heart rate estimation and heart rate variability (HRV) were evaluated by comparing the proposed method with previously developed methods. The results showed that a) the artifacts derived by head movement are efficiently removed, compared to previous methods; and b) rPPG images describing the spread of facial blood flow are acquired in real-time.

Highlights

  • Quantitative understanding of cardiac activity is an important part of individual health management in the modern society

  • Since the ECG shape is derived by electrical changes in the heart, the heart rate variability (HRV) calculated using ECG is used as a reference signal

  • HRV calculated using PPG has been widely used since the cardiac activity can be monitored by only one PPG sensor attached to the index finger

Read more

Summary

Introduction

Quantitative understanding of cardiac activity is an important part of individual health management in the modern society. Many medical devices have been developed to understand individual health and to acquire their accurate biosignals. The electrocardiogram (ECG) and photoplethysmography (PPG) are two such methods that can monitor cardiac activities without invasive procedures. Heart rate variability (HRV), which is calculated from the change in the. Since the ECG shape is derived by electrical changes in the heart, the HRV calculated using ECG is used as a reference signal. HRV calculated using PPG has been widely used since the cardiac activity can be monitored by only one PPG sensor attached to the index finger. Many studies have demonstrated that HRVs calculated using PPG and ECG are not significantly different [2]–[4]

Objectives
Methods
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call