用腕戴式传感器和自适应分割检测液体摄入的通用方法。

Keum San Chun, Ashley B Sanders, Rebecca Adaimi, Necole Streeper, David E Conroy, Edison Thomaz
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引用次数: 16

摘要

在过去的十年里,移动技术的进步推动了智能系统的发展,该系统试图识别和建模各种与健康相关的人类行为。尽管多年来,基于被动传感器的自动饮食监测一直是一个研究活动日益增多的领域,但对跟踪液体摄入的关注要少得多。在这项工作中,我们将自适应分割技术应用于一个实用的、现成的手腕安装设备捕获的连续惯性数据流,以被动检测流体摄入姿势。我们在一项对30名参与者的研究中评估了我们的方法,该研究记录了561起饮酒事件。使用遗漏一名参与者(LOPO),我们能够以90.3%的准确率和91.0%的召回率检测饮酒事件,证明了我们方法的可推广性。除了我们提出的方法外,我们还提供了一个匿名和标记的饮酒和非饮酒手势数据集,以鼓励该领域的进一步工作。
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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Towards a Generalizable Method for Detecting Fluid Intake with Wrist-Mounted Sensors and Adaptive Segmentation.

Over the last decade, advances in mobile technologies have enabled the development of intelligent systems that attempt to recognize and model a variety of health-related human behaviors. While automated dietary monitoring based on passive sensors has been an area of increasing research activity for many years, much less attention has been given to tracking fluid intake. In this work, we apply an adaptive segmentation technique on a continuous stream of inertial data captured with a practical, off-the-shelf wrist-mounted device to detect fluid intake gestures passively. We evaluated our approach in a study with 30 participants where 561 drinking instances were recorded. Using a leave-one-participant-out (LOPO), we were able to detect drinking episodes with 90.3% precision and 91.0% recall, demonstrating the generalizability of our approach. In addition to our proposed method, we also contribute an anonymized and labeled dataset of drinking and non-drinking gestures to encourage further work in the field.

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