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Non-contact, synchronous dynamic measurement of respiratory rate and heart rate based on dual sensitive regions

机译:基于双敏感区域的呼吸频率和心率的非接触式同步动态测量

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Background Currently, many imaging photoplethysmography (IPPG) researches have reported non-contact measurements of physiological parameters, such as heart rate (HR), respiratory rate (RR), etc. However, it is accepted that only HR measurement has been mature for applications, and other estimations are relatively incapable for reliable applications. Thus, it is worth keeping on persistent studies. Besides, there are some issues commonly involved in these approaches need to be explored further. For example, motion artifact attenuation, an intractable problem, which is being attempted to be resolved by sophisticated video tracking?and detection algorithms. Methods This paper proposed a blind source separation-based method that could synchronously measure RR and HR in non-contact way. A dual region of interest on facial video image was selected to yield 6-channels Red/Green/Blue signals. By applying Second-Order Blind Identification algorithm to those signals generated above, we obtained 6-channels outputs that contain blood volume pulse (BVP) and respiratory motion artifact. We defined this motion artifact as respiratory signal (RS). For the automatic selections of the RS and BVP among these outputs, we devised a kurtosis-based identification strategy, which guarantees the dynamic RR and HR monitoring available. Results The experimental results indicated that, the estimation by the proposed method has an impressive performance compared with the measurement of the commercial medical sensors. Conclusions The proposed method achieved dynamic measurement of RR and HR, and the extension and revision of it may have the potentials for more physiological signs detection, such as heart rate variability, eye blinking, nose wrinkling, yawn, as well as other muscular movements. Thus, it might provide a promising approach for IPPG-based applications such as emotion computation and fatigue detection, etc.
机译:背景技术目前,许多成像光电容积描记术(IPPG)研究已经报告了生理参数(例如心率(HR),呼吸频率(RR)等)的非接触式测量。但是,已经接受了只有HR测量在应用中已经成熟,而其他估算对于可靠的应用程序则相对无能为力。因此,值得继续研究。此外,这些方法通常还涉及一些问题,需要进一步探讨。例如,运动伪影衰减是一个棘手的问题,正试图通过复杂的视频跟踪和检测算法来解决。方法本文提出了一种基于盲源分离的方法,该方法可以以非接触方式同步测量RR和HR。选择面部视频图像上的双关注区域以产生6通道红色/绿色/蓝色信号。通过对上面生成的那些信号应用二阶盲识别算法,我们获得了包含血容量脉冲(BVP)和呼吸运动伪影的6通道输出。我们将此运动伪像定义为呼吸信号(RS)。为了在这些输出中自动选择RS和BVP,我们设计了一种基于峰度的识别策略,该策略可确保动态RR和HR监控可用。结果实验结果表明,与商用医疗传感器的测量相比,该方法的估计具有令人印象深刻的性能。结论所提出的方法实现了RR和HR的动态测量,其扩展和修订可能具有更多的生理体征检测潜力,例如心率变异性,眨眼,鼻子皱纹,打哈欠以及其他肌肉运动。因此,它可能为基于IPPG的应用(如情绪计算和疲劳检测等)提供一种有前途的方法。

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