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引用次数: 9
摘要
光敏血压计是一种普遍的无创心脏监测方法。本文介绍了在树莓派(Raspberry Pi)上实现光心动图的方法。文中讨论了两种调制技术,这两种技术使 Raspberry Pi 可以使用外部声卡作为 A/D 转换器来测量这些信号。此外,还介绍了数字信号处理如何提高信号质量。所介绍的方法可用于低成本心脏功能监测、远程医疗应用和教育,因为使用的是廉价的当前硬件。有关测量的完整文档和开源软件请访问:http://www.noise.inf.u-szeged.hu/Instruments/raspberryplet/。
Low-cost photoplethysmograph solutions using the Raspberry Pi
Photoplethysmography is a prevalent, noninvasive heart monitoring method. In this paper an implementation of photoplethysmography on the Raspberry Pi is presented. Two modulation techniques are discussed, which make possible to measure these signals by the Raspberry Pi, using an external sound card as A/D converter. Furthermore, it is shown, how can digital signal processing improve signal quality. The presented methods can be used in low-cost cardiac function monitoring, in telemedicine applications and in education as well, since cheap and current hardware are used. Full documentation and open-source software for the measurement available: http://www.noise.inf.u-szeged.hu/Instruments/raspberryplet/.