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Video-Based Pulse Rate Variability Measurement Using Periodic Variance Maximization and Adaptive Two-Window Peak Detection

机译:基于视频的脉冲速率可变性测量使用周期性方差最大化和自适应双窗峰值检测

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摘要

Many previous studies have shown that the remote photoplethysmography (rPPG) can measure the Heart Rate (HR) signal with very high accuracy. The remote measurement of the Pulse Rate Variability (PRV) signal is also possible, but this is much more complicated because it is then necessary to detect the peaks on the temporal rPPG signal, which is usually quite noisy and has a lower temporal resolution than PPG signals obtained by contact equipment. Since the PRV signal is vital for various applications such as remote recognition of stress and emotion, the improvement of PRV measurement by rPPG is a critical task. Contact based PRV measurement has already been investigated, but the research on remotely measured PRV is very limited. In this paper, we propose to use the Periodic Variance Maximization (PVM) method to extract the rPPG signal and event-related Two-Window algorithm to improve the peak detection for PRV measurement. We have made several contributions. Firstly, we show that the newly proposed PVM method and Two-Window algorithm can be used for PRV measurement in the non-contact scenario. Secondly, we propose a method to adaptively determine the parameters of the Two-Window method. Thirdly, we compare the algorithm with other attempts for improving the non-contact PRV measurement such as the Slope Sum Function (SSF) method and the Local Maximum method. We calculated several features and compared the accuracy based on the ground truth provided by contact equipment. Our experiments showed that this algorithm performed the best of all the algorithms.
机译:许多以前的研究表明,远程光学电脑描绘(RPPG)可以以非常高的精度测量心率(HR)信号。脉冲速率变异性(PRV)信号的远程测量也是可能的,但这更复杂,因为那么必要检测时间RPPG信号上的峰值,这通常非常嘈杂,并且具有比PPG更低的时间分辨率通过联系设备获得的信号。由于PRV信号对于各种应用至关重要的应用,例如远程识别应力和情绪,因此RPPG的PRV测量的改善是一个关键任务。基于接触的PRV测量已经研究过,但对远程测量的PRV的研究非常有限。在本文中,我们建议使用周期性方差最大化(PVM)方法来提取RPPG信号和事件相关的双窗口算法,以改善PRV测量的峰值检测。我们做了几项贡献。首先,我们表明新提出的PVM方法和双窗口算法可用于非联系人场景中的PRV测量。其次,我们提出了一种方法来自适应地确定双窗口方法的参数。第三,我们将算法与其他尝试进行比较,以改善诸如斜坡和函数(SSF)方法和局部最大方法的非接触式PRV测量。我们计算了几个特征,并基于接触设备提供的地面真理比较了准确性。我们的实验表明,该算法表现了所有算法中最好的。

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