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Motion robust imaging photoplethysmography in defocus blurring

机译:在散焦模糊的运动鲁棒成像光增性近似术

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Non-contact, imaging photoplethysmography (IPPG) uses video sequence to measure variations in light absorption, caused by blood volume pulsations, to extract cardiopulmonary parameters including heart rate (HR), pulse rate variability, and respiration rate. Previous researches most focused on extraction of these vital signs base on the focus video, which require a static and focusing environment. However, little has been reported about the influence of defocus blur on IPPG signal's extraction. In this research, we established an IPPG optical model in defocusing motion conditions. It was found that the IPPG signal is not sensitive to defocus blur by analysis the light intensity distribution in the defocus images. In this paper, a real-time measurement of heart rate in defocus and motion conditions based on IPPG was proposed. Automatically select and track the region of interest (ROI) by constructing facial coordinates through facial key points detection, obtained the IPPG signal. The signal is de-noised to obtain the spectrum by the wavelet filtering, color-distortion filter (CDF) and fast Fourier transform (FFT). The peak of the spectrum is corresponded to heartbeats. Experimental results on a data set of 30 subjects show that the physiological parameters include heart rate and pulse wave, derived from the defocus images captured by the IPPG system, exhibit characteristics comparable to conventional the blood volume pulse (BVP) sensor. Contrast experiment show that the difference between the results measured by both methods is within 3 beat per minute (BPM). This technology has significant potential for advancing personal health care and telemedicine in motion situation.
机译:非接触,光电容积描记成像(IPPG)使用视频序列,以测量光吸收的变化,引起的血液体积脉动,以提取心肺参数,包括心脏速率(HR),脉搏率变异性和呼吸速率。大部分集中在这些生命体征的提取已有的研究基础上的对焦视频,这需要一个静态和聚焦环境。然而,很少有报道大约离焦模糊对IPPG信号的提取的影响。在这项研究中,我们建立了散焦运动条件的IPPG光学模型。据发现,所述IPPG信号通过分析不是散焦模糊敏感的散焦图像中的光强度分布。在本文中,基于IPPG散焦和运动条件下心脏速率的实时测量,提出了。自动选择并通过面部关键点检测构成面部的坐标,所获得的信号IPPG跟踪关注区域(ROI)的区域中。该信号降噪由小波滤波来得到该光谱,色彩失真滤波器(CDF)和快速傅里叶变换(FFT)。光谱的峰值对应的心跳。上的30名受试者的数据组的实验结果表明,该生理参数包括心脏速率和脉冲波从由IPPG系统,表现出的特性与常规的血液体积脉冲(BVP)传感器捕获的散焦图像导出。对比试验表明,由这两种方法的测量结果之间的差异是每分钟3节拍(BPM)内。这项技术在运动情况下推进个人健康护理和远程医疗显著的潜力。

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