Just-in-time sampling and pre-filtering for wearable physiological sensors: going from days to weeks of operation on a single charge

Nan Hua, Ashwin Lall, J. Romberg, Jun Xu, M. al’Absi, Emre Ertin, Santosh Kumar, Shikhar Suri
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引用次数: 6

Abstract

Continuous monitoring of human physiology and behavior in natural environments via unobtrusively wearable wireless sensors is witnessing rapid adoption in both consumer health-care and in scientific studies, since those portable and long-running devices can provide critical information for diagnosis and early prevention of disease, as well as invaluable data for scientific studies. Due to the requirement of continuous monitoring, these sensors, all operating on small wearable batteries, require frequent recharging. Lowering this recharging burden is essential for their widespread adoption. In this paper we explore mechanisms for significantly enhancing the lifetime of these wearable sensors at the cost of a small loss in their sensing accuracy. We propose two ideas that build upon our observation that collecting bursts of samples over short periods of time is sufficient to capture the most interesting and informative part of the signal. In the first part of this paper, we propose a general methodology for reconstructing bandlimited signals accurately from such short bursts of samples. While this reconstruction task is in nature an ill-conditioned problem, we show that the insertion of an analog "modulated pre-filter" hardware module before the ADC can almost surely alleviate this conditioning problem. In the second part of this paper, we describe just-in-time sampling, which by sampling in short bursts at the "right" times, can accurately track R-wave peaks in ECG signals. Using simulations on publicly available traces as well as self-collected data, we show the efficacy of this technique.
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可穿戴式生理传感器的实时采样和预滤波:一次充电可运行数天至数周
通过不显眼的可穿戴无线传感器在自然环境中持续监测人的生理和行为,在消费者保健和科学研究中得到迅速采用,因为这些便携式和长期使用的设备可以为诊断和早期预防疾病提供关键信息,并为科学研究提供宝贵数据。由于需要持续监测,这些传感器都是在小型可穿戴电池上运行,需要经常充电。降低充电负担对它们的广泛采用至关重要。在本文中,我们探索了显著提高这些可穿戴传感器寿命的机制,而代价是传感精度的小损失。基于我们的观察,我们提出了两个想法,即在短时间内收集样本的爆发足以捕获信号中最有趣和最有信息的部分。在本文的第一部分中,我们提出了一种从这种短脉冲样本中精确重建带限信号的一般方法。虽然这个重建任务本质上是一个病态问题,但我们表明,在ADC之前插入一个模拟“调制预滤波器”硬件模块几乎可以肯定地缓解这个条件问题。在本文的第二部分,我们描述了即时采样,它通过在“正确”的时间在短脉冲中采样,可以准确地跟踪心电信号中的r波峰值。通过对公开可用的轨迹以及自己收集的数据进行模拟,我们展示了这种技术的有效性。
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