Investigating barriers and facilitators to wearable adherence in fine-grained eating detection

Rawan Alharbi, Nilofar Vafaie, K. Liu, Kevin Moran, Gwendolyn Ledford, A. Pfammatter, B. Spring, N. Alshurafa
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引用次数: 12

Abstract

Energy balance is one component of weight management, but passive objective measures of caloric intake are non-existent. Given the recent success of actigraphy as a passive objective measure of the physical activity construct that relieves participants of the burden of biased self-report, computer scientists and engineers are aiming to find a passive objective measure of caloric intake. Passive sensing food intake systems have failed to go beyond the lab and into behavioral research in part due to low adherence to wearing passive monitoring systems. While system accuracy and battery lifetime are sine qua non to a successfully deployed technology, they come second to adherence, since a system does nothing if it remains unused. This paper focuses on adherence as affected by: 1) perceived data privacy; 2) stigma of wearing devices; 3) comfort. These factors highlight new challenges surrounding participant informed consent and Institutional Review Board (IRB) risk assessment. The wearables examined include neck- and wrist-worn sensors, and video camera-based systems. Findings support the potential for adherence using wrist- and shoulder-based video cameras, and personalized style-conscious neck-worn sensors. The feasibility of detecting fine-grained eating gestures to validate the machine learning models is shown, improving the potential of translation of this technology.
在细粒度饮食检测中研究可穿戴设备粘附性的障碍和促进因素
能量平衡是体重管理的一个组成部分,但热量摄入的被动客观测量是不存在的。鉴于最近活动记录仪作为一种被动客观测量身体活动结构的成功,减轻了参与者有偏见的自我报告的负担,计算机科学家和工程师正致力于寻找一种被动客观测量热量摄入的方法。被动感应食物摄入系统未能走出实验室,进入行为研究,部分原因是佩戴被动监测系统的依从性较低。虽然系统精度和电池寿命是成功部署技术的必要条件,但它们排在第二位,因为如果系统不使用,它就什么也做不了。本文主要关注受以下因素影响的依从性:1)感知数据隐私;2)佩戴装置的污名;3)安慰。这些因素突出了围绕参与者知情同意和机构审查委员会(IRB)风险评估的新挑战。测试的可穿戴设备包括脖子和手腕上佩戴的传感器,以及基于摄像头的系统。研究结果支持使用手腕和肩膀上的视频摄像头以及个性化的风格敏感的脖子上的传感器来坚持的潜力。研究显示了检测细粒度进食手势以验证机器学习模型的可行性,提高了该技术翻译的潜力。
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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