SmartAct: Energy Efficient and Real-Time Hand-to-Mouth Gesture Detection Using Wearable RGB-T.

Soroush Shahi, Mahdi Pedram, Glenn Fernandes, Nabil Alshurafa
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引用次数: 2

Abstract

Researchers have been leveraging wearable cameras to both visually confirm and automatically detect individuals' eating habits. However, energy-intensive tasks such as continuously collecting and storing RGB images in memory, or running algorithms in real-time to automate detection of eating, greatly impacts battery life. Since eating moments are spread sparsely throughout the day, battery life can be mitigated by recording and processing data only when there is a high likelihood of eating. We present a framework comprising a golf-ball sized wearable device using a low-powered thermal sensor array and real-time activation algorithm that activates high-energy tasks when a hand-to-mouth gesture is confirmed by the thermal sensor array. The high-energy tasks tested are turning on the RGB camera (Trigger RGB mode) and running inference on an on-device machine learning model (Trigger ML mode). Our experimental setup involved the design of a wearable camera, 6 participants collecting 18 hours of data with and without eating, the implementation of a feeding gesture detection algorithm on-device, and measures of power saving using our activation method. Our activation algorithm demonstrates an average of at-least 31.5% increase in battery life time, with minimal drop of recall (5%) and without impacting the accuracy of detecting eating (a slight 4.1% increase in F1-Score).

SmartAct:使用可穿戴RGB-T的节能实时手对嘴手势检测。
研究人员一直在利用可穿戴摄像头从视觉上确认和自动检测个人的饮食习惯。然而,诸如在内存中持续收集和存储RGB图像,或实时运行算法以自动检测进食等高能耗任务,会极大地影响电池寿命。由于一天中吃饭的时间很少,所以只有在很可能吃东西的时候才记录和处理数据,从而缩短电池寿命。我们提出了一个框架,包括一个高尔夫球大小的可穿戴设备,使用低功率热传感器阵列和实时激活算法,当热传感器阵列确认手对嘴的手势时,激活高能任务。测试的高能任务是打开RGB相机(触发RGB模式)和在设备上的机器学习模型(触发ML模式)上运行推理。我们的实验设置包括设计一个可穿戴相机,6名参与者在进食和不进食的情况下收集18小时的数据,在设备上实现进食手势检测算法,以及使用我们的激活方法节省电力的措施。我们的激活算法显示电池寿命平均至少增加31.5%,召回率最小(5%),并且不影响检测饮食的准确性(F1-Score略有增加4.1%)。
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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