基于稀疏采样和非对称通信的超低功耗可穿戴健康传感

Deepak Ganesan
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引用次数: 0

摘要

可穿戴传感器为加速生物医学发现和改善全民健康状况提供了巨大的机会。人们对健康分析的需求越来越大——我们不再满足于计算步数和卡路里的可穿戴设备,我们想要测量生理、行为、活动、认知、影响和其他参数,期望这些数据能带来深刻的见解,从而提高生活质量。但期望和现实之间存在着鸿沟。我们如何从能量预算很小的传感器平台中提取这样的见解?我们如何将高速传感器数据传输到云端,以便在这些能源预算范围内进行深度分析?我们如何处理噪声、混杂因素和人为因素,这些因素使我们难以从现实世界中收集的信号中提取见解?在这次演讲中,我将讨论一些解决这些问题的策略。我将讨论我们如何设计一个低功耗的计算眼镜,通过利用稀疏性来持续跟踪眼睛和视觉环境,我们如何在以几十微瓦的功率运行的情况下以兆比特/秒的速度从可穿戴设备传输数据,以及我们如何在移动健康的背景下利用这些技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Ultra-low Power Wearable Health Sensing with Sparse Sampling and Asymmetric Communication
Wearable sensors offer tremendous opportunities for accelerating biomedical discovery, and improving population-scale health and wellness. There is a growing appetite for health analytics -- we are no longer content with wearables that count steps and calories, we want to measure physiology, behavior, activities, cognition, affect, and other parameters with the expectation that such data will lead to deep insights that can improve quality of life. But a chasm separates expectations and reality. How do we extract such insights from sensor platforms with tiny energy budgets? How do we communicate high-rate sensor data to the cloud for enabling deep analytics while operating within these energy budgets? How do we deal with noise, confounders, and artifacts that make insights hard to extract from signals collected in real-world settings? In this talk, I will discuss a few strategies to tackle these problems. I will discuss how we can design an low-power computational eyeglass that continually tracks eye and visual context by leveraging sparsity, how we can transfer data at Megabits/second from wearables while operating at tens of micro-watts of power, and how we can leverage these techniques in the context of mobile health.
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