Portable Real-Time System for Multi-Subject Localization and Vital Sign Estimation

Vijaysrinivas Rajagopal, Abdel-Kareem Moadi, A. Fathy, M. Abidi
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引用次数: 1

Abstract

A real-time non-contact vital sign detection system is developed by utilizing neural network-based detection, multi-object tracking, and direction of arrival (DoA) techniques. The DoA produces a spatial-based image, which is fed into the detector. The detector is a convolutional neural network (CNN), which produces a list potential subject locations. These locations are propagated and associated via a tracking method called BYTE. All of these methods allow the system to accurately localize and track subjects as well as improve the robustness of vital sign estimation for stationary, multi-subject scenarios. We demonstrate that this real-time system produces low error rates of less than 1 and 3 BPM for breathing and heart rate estimations respectively in both single and multi-subject scenarios. All this is done while maintaining an average of 14 FPS on a portable Jetson Xavier NX.
便携式多主体定位与生命体征估计实时系统
利用神经网络检测、多目标跟踪和到达方向(DoA)技术,开发了一种实时非接触生命体征检测系统。DoA产生一个基于空间的图像,该图像被输入到检测器中。检测器是一个卷积神经网络(CNN),它产生一个潜在的主题位置列表。这些位置通过称为BYTE的跟踪方法传播和关联。所有这些方法使系统能够准确地定位和跟踪受试者,并提高平稳、多受试者场景下生命体征估计的鲁棒性。我们证明了该实时系统在单主体和多主体场景下对呼吸和心率的估计分别产生低于1和3 BPM的低错误率。所有这些都是在便携式Jetson Xavier NX上保持平均14 FPS的情况下完成的。
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