Real-time quantifying heart beat rate from facial video recording on a smart phone using Kalman filters

W. Jiang, S. Gao, P. Wittek, Li Zhao
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引用次数: 21

Abstract

Photoplethysmography (PPG) can be carried out through facial video recording by a smart phone camera in ambient light. The main challenge is to eliminate motion artifacts and ambient noise. We describe a real-time algorithm to quantify the heart beat rate from facial video recording captured by the camera of a smart phone. We extract the green channel from the video. Then we normalize it and use a Kalman filter with a particular structure to eliminate ambient noise. This filter also enhances the heart pulse component in the signal distorted by Gaussian noise and white noise. After that we employ a band-pass FIR filter to remove the remaining motion artifacts. This is followed by peak detection or Lomb periodogram to estimate heart rate. The algorithm has low computational overhead, low delay and high robustness, making it suitable for real-time interaction on a smart phone. Finally we describe an Android application based on this study.
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实时量化心率从面部视频记录在智能手机上使用卡尔曼滤波器
光体积脉搏描记(PPG)可以通过智能手机摄像头在环境光下录制面部视频来进行。主要的挑战是消除运动伪影和环境噪声。我们描述了一种实时算法,可以从智能手机摄像头拍摄的面部视频记录中量化心率。我们从视频中提取绿色通道。然后对其进行归一化,并使用具有特定结构的卡尔曼滤波器来消除环境噪声。该滤波器还增强了被高斯噪声和白噪声失真的信号中的心脏脉冲分量。之后,我们采用带通FIR滤波器去除剩余的运动伪影。接下来是峰值检测或伦氏周期图来估计心率。该算法具有计算量小、时延低、鲁棒性强等特点,适用于智能手机上的实时交互。最后,我们在此基础上开发了一个Android应用。
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