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A User-adaptive Modeling for Eating Action Identification from Wristband Time Series

机译:腕带时间序列饮食行动识别的用户 - 自适应建模

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摘要

Eating activity monitoring using wearable sensors can potentially enable interventions based on eating speed to mitigate the risks of critical healthcare problems such as obesity or diabetes. Eating actions are poly-componential gestures composed of sequential arrangements of three distinct components interspersed with gestures that may be unrelated to eating. This makes it extremely challenging to accurately identify eating actions. The primary reasons for the lack of acceptance of state-of-the-art eating action monitoring techniques include the following: (ⅰ) the need to install wearable sensors that are cumbersome to wear or limit the mobility of the user, (ⅱ) the need for manual input from the user, and (ⅲ) poor accuracy in the absence of manual inputs. In this work, we propose a novel methodology, IDEA, that performs accurate eating action identification within eating episodes with an average F1 score of 0.92. This is an improvement of 0.11 for precision and 0.15 for recall for the worst-case users as compared to the state of the art. IDEA uses only a single wristband and provides feedback on eating speed every 2 min without obtaining any manual input from the user.
机译:使用可穿戴传感器的食用活动监控可能会根据进食速度来实现干预措施,以减轻肥胖或糖尿病等批判性医疗问题的风险。饮食行为是由三种不同组分的连续布置组成的多重组成手势,其散布着可能与进食无关的手势。这使得能够准确识别饮食行为极具挑战性。缺乏接受最先进的饮食监测技术的主要原因包括以下内容:(Ⅰ)安装可穿戴传感器的可穿戴传感器,这些传感器繁琐佩戴或限制用户的移动性,(Ⅱ)需要从用户的手动输入,(Ⅲ)在没有手动输入的情况下的准确性差。在这项工作中,我们提出了一种新颖的方法,思想,在进食发作内进行准确的饮食行动鉴定,平均F1得分为0.92。对于精度为0.11,对于最坏情况用户的精度,这是对最低案例用户的改进0.11。想法仅使用单个腕带,每2分钟提供关于进食速度的反馈,而无需从用户那里获取任何手动输入。

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