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一种基于佩戴口罩时的面部视频的实时心率估计框架。

A real-time heart rate estimation framework based on a facial video while wearing a mask.

作者信息

Ryu JongSong, Hong SunChol, Liang Shili, Pak SinIl, Zhang Lei, Wang Suqiu, Lian Yueqi

机构信息

School of Physics, Northeast Normal University, Changchun, Jilin, China.

Faculty of Physics, University of Science, Pyongyang, Democratic People's Republic of Korea.

出版信息

Technol Health Care. 2023;31(3):887-900. doi: 10.3233/THC-220322.

Abstract

BACKGROUND

The imaging photoplethysmography (iPPG) method is a non-invasive, non-contact measurement method that uses a camera to detect physiological indicators. On the other hand, wearing a mask has become essential today when COVID-19 is rampant, which has become a new challenge for heart rate (HR) estimation from facial videos recorded by a camera.

OBJECTIVE

The aim is to propose an iPPG-based method that can accurately estimate HR with or without a mask.

METHODS

First, the facial regions of interest (ROI) were divided into two sub-ROIs, and the original signal was obtained through spatial averaging with different weights according to the result of judging whether wearing a mask or not, and the CDF, which emphasizes the main component signal, was combined with the improved POS suitable for real-time HR estimation to obtain the noise-removed BVP signal.

RESULTS

For self-collected data while wearing a mask, MAE, RMSE, and ACC were 1.09 bpm, 1.44 bpm, and 99.08%, respectively.

CONCLUSION

Experimental results show that the proposed framework can estimate HR stably in real-time in both cases of wearing a mask or not. This study expands the application range of HR estimation based on facial videos and has very practical value in real-time HR estimation in daily life.

摘要

背景

成像光电容积脉搏波描记法(iPPG)是一种利用相机检测生理指标的非侵入性、非接触式测量方法。另一方面,在新冠疫情肆虐的当下,佩戴口罩已成为必要措施,这对通过相机记录的面部视频进行心率(HR)估计构成了新的挑战。

目的

旨在提出一种基于iPPG的方法,无论是否佩戴口罩都能准确估计心率。

方法

首先,将面部感兴趣区域(ROI)划分为两个子ROI,根据是否佩戴口罩的判断结果,通过不同权重的空间平均获得原始信号,并将强调主要成分信号的CDF与适用于实时心率估计的改进型POS相结合,得到去噪后的BVP信号。

结果

对于佩戴口罩时的自采集数据,平均绝对误差(MAE)、均方根误差(RMSE)和准确率(ACC)分别为1.09次/分钟、1.44次/分钟和99.08%。

结论

实验结果表明,所提出的框架在佩戴口罩和不佩戴口罩的情况下都能实时稳定地估计心率。本研究扩展了基于面部视频的心率估计应用范围,在日常生活中的实时心率估计方面具有很高的实用价值。

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