4.7 Article

Context-Adaptive Sub-Nyquist Sampling for Low-Power Wearable Sensing Systems

期刊

IEEE TRANSACTIONS ON MOBILE COMPUTING
卷 21, 期 12, 页码 4249-4262

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TMC.2021.3077731

关键词

Sensors; Information rates; Context modeling; Wearable sensors; Wearable computers; Receivers; Biomedical monitoring; Compressive sensing; physiological sensing; energy-efficient sensing; computation offloading; machine learning for healthcare

资金

  1. EU [616757]

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This paper investigates a context-adaptive sample acquisition strategy at sub-Nyquist sampling rate for wearable embedded sensor devices. The approach can be applied to compressive sensing frameworks to minimize sampling and transmission costs. The results show that the approach saves between 13 to 22 percent of energy while achieving similar pattern recognition performance and reconstruction error.
This paper investigates a context-adaptive sample acquisition strategy at sub-Nyquist sampling rate for wearable embedded sensor devices. Our approach can be applied to compressive sensing frameworks to minimise sampling and transmission costs. We consider a context estimate to represent the local signal structure and a feed-forward response model to continuously tune signal acquisition of an online sampling and transmission system. To evaluate our approach, we analysed the performance in different pattern recognition scenarios. We report three case studies here: (1) eating monitoring based on electromyography measurements in smart eyeglasses, (2) human activity recognition based on waist-worn inertial sensor data, and (3) heartbeat detection and arrhythmia classification based on single-lead electrocardiogram readings. Compared to conventional sub-Nyquist sampling, our context-adaptive approach saves between 13 to 22 percent of energy, while achieving similar pattern recognition performance and reconstruction error.

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