A Hardware-Assisted Energy-Efficient Processing Model for Activity Recognition Using Wearables

Hassan Ghasemzadeh, Ramin Fallahzadeh, R. Jafari
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引用次数: 15

Abstract

Wearables are being widely utilized in health and wellness applications, primarily due to the recent advances in sensor and wireless communication, which enhance the promise of wearable systems in providing continuous and real-time monitoring and interventions. Wearables are generally composed of hardware/software components for collection, processing, and communication of physiological data. Practical implementation of wearable monitoring in real-life applications is currently limited due to notable obstacles. The wearability and form factor are dominated by the amount of energy needed for sensing, processing, and communication. In this article, we propose an ultra-low-power granular decision-making architecture, also called screening classifier, which can be viewed as a tiered wake-up circuitry, consuming three orders of magnitude-less power than the state-of-the-art low-power microcontrollers. This processing model operates based on computationally simple template matching modules, based on coarse- to fine-grained analysis of the signals with on-demand and gradually increasing the processing power consumption. Initial template matching rejects signals that are clearly not of interest from the signal processing chain, keeping the rest of processing blocks idle. If the signal is likely of interest, the sensitivity and the power of the template matching modules are gradually increased, and ultimately, the main processing unit is activated. We pose optimization techniques to efficiently split a full template into smaller bins, called mini-templates, and activate only a subset of bins during each classification decision. Our experimental results on real data show that this signal screening model reduces power consumption of the processing architecture by a factor of 70% while the sensitivity of detection remains at least 80%.
基于可穿戴设备的活动识别硬件辅助节能处理模型
可穿戴设备在健康和保健应用中得到广泛应用,主要是由于传感器和无线通信的最新进展,这增强了可穿戴系统在提供连续和实时监测和干预方面的前景。可穿戴设备通常由硬件/软件组件组成,用于收集、处理和传输生理数据。由于明显的障碍,可穿戴式监控在现实生活中的实际应用目前受到限制。可穿戴性和外形因素主要取决于传感、处理和通信所需的能量。在本文中,我们提出了一种超低功耗粒度决策架构,也称为筛选分类器,它可以被视为分层唤醒电路,消耗的功率比最先进的低功耗微控制器低三个数量级。该处理模型基于计算简单的模板匹配模块,基于粗粒度到细粒度的按需分析信号,逐渐增加处理功耗。初始模板匹配拒绝信号处理链中明显不感兴趣的信号,使其余处理块空闲。如果信号可能是感兴趣的,则逐渐增加模板匹配模块的灵敏度和功率,最终激活主处理单元。我们提出了优化技术,以有效地将一个完整的模板分成更小的箱子,称为迷你模板,并在每个分类决策期间仅激活一个子集的箱子。在实际数据上的实验结果表明,该信号筛选模型将处理架构的功耗降低了70%,而检测灵敏度保持在80%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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