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Real-time ECG monitoring using compressive sensing on a heterogeneous multicore edge-device

机译:在异构多核边缘设备上使用压缩传感进行实时心电图监测

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In a typical ambulatory health monitoring systems, wearable medical sensors are deployed on the human body to continuously collect and transmit physiological signals to a nearby gateway that forward the measured data to the cloud-based healthcare platform. However, this model often fails to respect the strict requirements of healthcare systems. Wearable medical sensors are very limited in terms of battery lifetime, in addition, the system reliance on a cloud makes it vulnerable to connectivity and latency issues. Compressive sensing (CS) theory has been widely deployed in electrocardiogramme ECG monitoring application to optimize the wearable sensors power consumption. The proposed solution in this paper aims to tackle these limitations by empowering a gateway-centric connected health solution, where the most power consuming tasks are performed locally on a multicore processor. This paper explores the efficiency of real-time CS-based recovery of ECG signals on an IoT-gateway embedded with ARM's big.LITTLE (TM) multicore for different signal dimension and allocated computational resources. Experimental results show that the gateway is able to reconstruct ECG signals in real-time. Moreover, it demonstrates that using a high number of cores speeds up the execution time and it further optimizes energy consumption. The paper identifies the best configurations of resource allocation that provides the optimal performance. The paper concludes that multicore processors have the computational capacity and energy efficiency to promote gateway-centric solution rather than cloud-centric platforms. (C) 2019 Published by Elsevier B.V.
机译:在典型的门诊健康监控系统中,可穿戴式医疗传感器部署在人体上,以不断收集生理信号并将其传输到附近的网关,该网关将测量的数据转发到基于云的医疗平台。但是,此模型通常无法遵守医疗保健系统的严格要求。可穿戴式医疗传感器的电池寿命非常有限,此外,系统对云的依赖使其易受连接性和延迟问题的影响。压缩感测(CS)理论已广泛应用于心电图ECG监测应用中,以优化可穿戴式传感器的功耗。本文提出的解决方案旨在通过启用以网关为中心的连接健康解决方案来解决这些限制,在该解决方案中,最耗电的任务在多核处理器上本地执行。本文探讨了在嵌入式ARM的big.LITTLE(TM)多核的物联网网关上基于CS的ECG信号实时恢复的效率,该信号可用于不同的信号尺寸和分配的计算资源。实验结果表明,该网关能够实时重构心电信号。此外,它表明使用大量内核可以加快执行时间,并进一步优化能耗。本文确定了提供最佳性能的最佳资源分配配置。本文得出的结论是,多核处理器具有计算能力和能效,可以促进以网关为中心的解决方案,而不是以云为中心的平台。 (C)2019由Elsevier B.V.发布

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