使用自供电可穿戴设备的能量优化手势识别

Jaehyun Park, Ganapati Bhat, C. S. Geyik, Ümit Y. Ogras, H. Lee
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引用次数: 5

摘要

小尺寸和低成本的可穿戴设备支持各种应用,包括手势识别、健康监测和活动跟踪。能量收集和最佳能量管理对于这些设备的采用至关重要,因为它们受到电池容量的严重限制。本文考虑了使用自供电设备的最佳手势识别。我们提出了一种在能量预算和精度限制下可以识别的手势数量最大化的方法。我们利用可穿戴设备的能量消耗分解导出的分析模型构建了一个计算效率高的优化算法。我们的经验评估表明,与手动优化的解决方案相比,识别手势的数量增加了2.4倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy-Optimal Gesture Recognition using Self-Powered Wearable Devices
Small form factor and low-cost wearable devices enable a variety of applications including gesture recognition, health monitoring, and activity tracking. Energy harvesting and optimal energy management are critical for the adoption of these devices, since they are severely constrained by battery capacity. This paper considers optimal gesture recognition using self-powered devices. We propose an approach to maximize the number of gestures that can be recognized under energy budget and accuracy constraints. We construct a computationally efficient optimization algorithm with the help of analytical models derived using the energy consumption breakdown of a wearable device. Our empirical evaluations demonstrate up to 2.4 x increase in the number of recognized gestures compared to a manually optimized solution.
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