一种基于织物的廉价可穿戴颈带,用于准确可靠的饮食活动监测

Md. Tauhiduzzaman Khan, Shabnam Ghaffarzadegan, Z. Feng, T. Hasan
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引用次数: 0

摘要

饮食习惯在公众健康和福祉方面发挥着重要作用。因此,监测饮食活动对于保持健康的生活方式和预防糖尿病、肥胖和高血压等许多广泛传播的疾病至关重要。在这项工作中,我们提出了一种低成本的可穿戴式颈带,用于自动监测饮食活动。这款售价5美元的织物设备由驻极体麦克风、蓝牙无线电模块和可充电锂离子电池组成,可以将音频实时无线传输到智能设备上。该分类算法对音频流进行3s段处理,提取短时频谱、波形和基于能量的声学特征。我们从声学特征中计算各种统计函数以获得分段特征向量,这些特征向量随后用于机器学习。我们使用使用领口收集的内部数据集进行实验评估。我们比较了不同分类器在区分饮用、咀嚼固体食物和其他非饮食活动方面的表现。使用所提出的可穿戴设备和基于随机森林(RF)的分类器,平均分类f测量值为81.25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fabric-based Inexpensive Wearable Neckband for Accurate and Reliable Dietary Activity Monitoring
Dietary habits play a significant role in public health and well-being. Monitoring dietary activities is thus essential for maintaining a healthy lifestyle and preventing many widespread diseases, such as diabetes, obesity, and hypertension. In this work, we present a low-cost wearable neckband for automatic diet activity monitoring. The $5 fabric-based device, comprising an electret microphone, a Bluetooth radio module, and a rechargeable Lithium-ion battery, can wirelessly transmit audio to a smart device in real-time. The classification algorithm processes the audio stream in 3s segments and extracts short-time spectral, waveform, and energy-based acoustic features. We compute various statistical functions from the acoustic features to obtain segmental feature vectors, which are subsequently used for machine learning. We perform an experimental evaluation using an in-house dataset collected using the neckband. We compare the performance of different classifiers in distinguishing between drinking, chewing solid foods, and other non-dietary activities. An averaged class-wise F-measure of 81.25% is achieved using the proposed wearable device and a Random Forest (RF) based classifier.
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