SYNTROFOS: A Wearable Device for Vital Sign Monitoring, Hardware and Signal Processing Aspects

R. Stojanovic, Jovan Djurkovic, Slaviša Mijušković, B. Lutovac, A. Škraba
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引用次数: 1

Abstract

Healthcare wearables have become very powerful and useful devices that are able to detect and monitor vital signs. Through recent applications and products, they have proven to be particularly effective in detecting symptoms of COVID-19. In this paper, we present an optimized design of a device, named SYNTROFOS, capable of detecting heart rate, respiration rate, and temperature. The analog and digital hardware employs off-the-shelf components, while the signal processing algorithms are optimized for implementation on low-power, low-cost, and small-sized memory microcontrollers. The decision-making and visualization interface is extremely simplified, indicating only good and bad states. Via the attached BLE Beacon the system sends the altering messages to close environment or remote medical staff. During the testing, significant noise immunity and satisfactory accuracy, less than 1 beat (breaths) per minute, are achieved. Although the presentation includes the overall system architecture, the focus is on hardware design challenges and optimized signal processing algorithms.
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SYNTROFOS:用于生命体征监测、硬件和信号处理方面的可穿戴设备
医疗可穿戴设备已经成为非常强大和有用的设备,能够检测和监测生命体征。通过最近的应用和产品,它们已被证明在检测COVID-19症状方面特别有效。在本文中,我们提出了一个优化设计的装置,称为SYNTROFOS,能够检测心率,呼吸速率和温度。模拟和数字硬件采用现成的组件,而信号处理算法则针对低功耗、低成本和小尺寸内存微控制器进行了优化。决策和可视化界面极其简化,只显示好状态和坏状态。通过附加的BLE信标,系统将改变的信息发送给封闭环境或远程医务人员。在测试过程中,实现了显著的抗噪性和令人满意的精度,每分钟少于1次心跳(呼吸)。虽然演示包括整个系统架构,但重点是硬件设计挑战和优化的信号处理算法。
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