使用面部视频进行非接触式脉搏率测量

Ruba M, V. Jeyakumar, Gurucharan Marthi Krishna Kumar, Kousika V, V. S
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引用次数: 2

摘要

脉搏率是反映个体生理状态的重要生理参数之一,是一个重要的监测参数。在过去的十年中,更多的重点放在低成本和易于使用的非接触式系统上。尽管有这些进步,但大多数这些系统都适用于离线情况下的实验室环境。本课题提出了一种有效的面部视频脉冲率估计系统。介绍了一个包含160个带脉冲率视频的数据集。数据集来自20名受试者在2种光照条件下进行4项活动。每一个活动都被放置在三脚架上的智能手机摄像头捕捉到。这个包含面部视频和脉搏率的数据集在不同的卷积神经网络(CNN)模型上进行训练,以预测脉搏率。将它们的性能进行比较,以获得更好的结果。另一种称为欧拉视频放大(EVM)的方法也在相同的数据集上实现,并将结果与CNN结果进行比较,以获得更好的精度。该技术在推进个人医疗保健和远程医疗领域具有很大的潜力。该系统在运动和照明方面的进一步改进可以在许多实时应用中证明是有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NON-CONTACT PULSE RATE MEASUREMENT USING FACIAL VIDEOS
Pulse rate (PR) is one of the vital physiological parameters which indicates the physiological state of individuals thus proving to be an important parameter to be monitored. In the last decade, more emphasis is given to non-contact based systems that are low-cost and are easy to use. Despite these advancements, most of these systems are suitable for a lab environment in offline situations. This project presents an effective system for the estimation of a pulse rate from facial videos. A dataset of 160 videos with pulse rate has been introduced. The dataset is obtained from 20 subjects performing 4 activities in 2 lighting conditions. Each activity is captured by a smartphone camera placed on a tripod. This dataset with facial videos and pulse rate is trained on different Convolutional Neural Network (CNN) models to predict the pulse rate. Their performances were compared to obtain better results. Another method called Eulerian video magnification (EVM) was also implemented with the same dataset and the results were compared with the CNN results for better accuracy. This technology possesses a high potential in advancing personal health care and in the field of telemedicine. Additional improvements to the proposed system with regards to movement and illumination can prove to be useful in many real-time applications.
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