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使用可穿戴传感器识别饮食活动事件。

Recognition of dietary activity events using on-body sensors.

作者信息

Amft Oliver, Tröster Gerhard

机构信息

ETH Zurich, Wearable Computing Lab., c/o Electronics Laboratory, Gloriastrasse 35, 8092 Zurich, Switzerland.

出版信息

Artif Intell Med. 2008 Feb;42(2):121-36. doi: 10.1016/j.artmed.2007.11.007. Epub 2008 Jan 31.

Abstract

OBJECTIVE

An imbalanced diet elevates health risks for many chronic diseases including obesity. Dietary monitoring could contribute vital information to lifestyle coaching and diet management, however, current monitoring solutions are not feasible for a long-term implementation. Towards automatic dietary monitoring, this work targets the continuous recognition of dietary activities using on-body sensors.

METHODS

An on-body sensing approach was chosen, based on three core activities during intake: arm movements, chewing and swallowing. In three independent evaluation studies the continuous recognition of activity events was investigated and the precision-recall performance analysed. An event recognition procedure was deployed, that addresses multiple challenges of continuous activity recognition, including the dynamic adaptability for variable-length activities and flexible deployment by supporting one to many independent classes. The approach uses a sensitive activity event search followed by a selective refinement of the detection using different information fusion schemes. The method is simple and modular in design and implementation.

RESULTS

The recognition procedure was successfully adapted to the investigated dietary activities. Four intake gesture categories from arm movements and two food groups from chewing cycle sounds were detected and identified with a recall of 80-90% and a precision of 50- 64%. The detection of individual swallows resulted in 68% recall and 20% precision. Sample-accurate recognition rates were 79% for movements, 86% for chewing and 70% for swallowing.

CONCLUSIONS

Body movements and chewing sounds can be accurately identified using on-body sensors, demonstrating the feasibility of on-body dietary monitoring. Further investigations are needed to improve the swallowing spotting performance.

摘要

目的

不均衡饮食会增加包括肥胖症在内的多种慢性疾病的健康风险。饮食监测可为生活方式指导和饮食管理提供重要信息,然而,目前的监测解决方案无法长期实施。为实现自动饮食监测,本研究旨在利用可穿戴式传感器持续识别饮食活动。

方法

采用可穿戴式传感方法,该方法基于进食过程中的三个核心活动:手臂运动、咀嚼和吞咽。在三项独立的评估研究中,对活动事件的持续识别进行了调查,并分析了精确率-召回率性能。部署了一种事件识别程序,该程序解决了持续活动识别中的多个挑战,包括对可变长度活动的动态适应性以及通过支持一对多独立类别实现灵活部署。该方法首先进行敏感的活动事件搜索,然后使用不同的信息融合方案对检测结果进行选择性优化。该方法在设计和实现上简单且模块化。

结果

识别程序成功应用于所研究的饮食活动。从手臂运动中检测并识别出四种进食手势类别,从咀嚼周期声音中检测并识别出两种食物类别,召回率为80%-90%,精确率为50%-64%。对单个吞咽动作的检测召回率为68%,精确率为20%。动作的样本精确识别率为79%,咀嚼为86%,吞咽为70%。

结论

利用可穿戴式传感器可以准确识别身体动作和咀嚼声音,证明了可穿戴式饮食监测的可行性。需要进一步研究以提高吞咽动作的检测性能。

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