基于光电脉搏波信号的驾驶员视频心率监测系统

M. Hui, H. Nisar, Yeap Kim Ho, Teh Peh Chiong
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引用次数: 2

摘要

本文提出了一种基于视频的非接触式驾驶人心率监测系统。该系统使用从受试者面部提取的光电容积脉搏波(PPG)信号来测量其心率。所获得的PPG信号受到汽车在现实生活中行驶时产生的照明变化和运动伪影的影响。因此,采用一系列滤波算法来降低噪声以获得准确的心率。使用行车记录仪以30fps的帧率记录受试者的面部视频,时长10秒。图像分辨率为$640x480$ pixels。在每个视频帧中,使用Viola-Jones人脸检测算法检测受试者的面部,并对感兴趣区域(ROI)进行分割,计算平均的红绿蓝(RGB)值。然后使用一系列算法对原始PPG信号进行滤波,如信号去趋势、信号归一化、光照变化减小、带通滤波、信号平滑和联合近似对角化特征矩阵(JADE)独立分量分析(ICA)。利用快速傅里叶变换(FFT)将滤波后的PPG信号变换到频域进行峰值检测。与峰值振幅相对应的频率分量是受试者的心率,以每分钟心跳数(bpm)为单位测量。
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A Video based Heart Rate Monitoring System for Drivers Using Photoplethysmography Signal
In this paper, a video based contactless heart rate monitoring system for a person driving a car is proposed. This system uses photoplethysmography (PPG) signal extracted from subject's face to measure his heart rate. The PPG signal acquired is effected by the illumination variation and motion artifacts that are induced when the car is moving in real life scenario. Hence, a series of filtering algorithms are applied to reduce the noise to obtain accurate heart rate. The video of subject's face is recorded for ten seconds using dashcam at a frame rate of $30fps$. The resolution of image is $640x480$ pixels. In each video frame, the subject's face is detected using Viola-Jones face detector algorithm and region of interest (ROI) is segmented to compute the average Red-Green-Blue (RGB) values. The raw PPG signal is then filtered using a series of algorithms such as signal detrending, signal normalization, illumination variation reduction, bandpass filtering, signal smoothing and Joint Approximate Diagonalization Eigenmatrices (JADE) Independent Component Analysis (ICA). Fast Fourier Transform (FFT) is used to transform the filtered PPG signal into frequency domain for peak detection. The frequency component that corresponds to the peak amplitude is the heart rate of the subject, measured in beats per minute (bpm).
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