Ghosh Tonmoy, Hossain Delwar, Sazonov Edward
Department of Electrical and Computer Engineering, The University of Alabama, Tuscaloosa, AL 35401 USA.
IEEE Sens J. 2021 Dec 15;21(24):27728-27735. doi: 10.1109/jsen.2021.3124203. Epub 2021 Oct 29.
Objective detection of periods of wear and non-wear is critical for human studies that rely on information from wearable sensors, such as food intake sensors. In this paper, we present a novel method of compliance detection on the example of the Automatic Ingestion Monitor v2 (AIM-2) sensor, containing a tri-axial accelerometer, a still camera, and a chewing sensor. The method was developed and validated using data from a study of 30 participants aged 18-39, each wearing the AIM-2 for two days (a day in pseudo-free-living and a day in free-living). Four types of wear compliance were analyzed: 'normal-wear', 'non-compliant-wear', 'non-wear-carried', and 'non-wear-stationary'. The ground truth of those four types of compliance was obtained by reviewing the images of the egocentric camera. The features for compliance detection were the standard deviation of acceleration, average pitch, and roll angles, and mean square error of two consecutive images. These were used to train three random forest classifiers 1) accelerometer-based, 2) image-based, and 3) combined accelerometer and image-based. Satisfactory wear compliance measurement accuracy was obtained using the combined classifier (89.24%) on leave one subject out cross-validation. The average duration of compliant wear in the study was 9h with a standard deviation of 2h or 70.96% of total on-time. This method can be used to calculate the wear and non-wear time of AIM-2, and potentially be extended to other devices. The study also included assessments of sensor burden and privacy concerns. The survey results suggest recommendations that may be used to increase wear compliance.
对于依赖可穿戴传感器(如食物摄入传感器)信息的人体研究而言,客观检测佩戴和未佩戴时段至关重要。在本文中,我们以自动摄入监测仪v2(AIM - 2)传感器为例,提出一种新的依从性检测方法,该传感器包含一个三轴加速度计、一个静态相机和一个咀嚼传感器。该方法是利用来自一项针对30名年龄在18 - 39岁参与者的研究数据开发并验证的,每位参与者佩戴AIM - 2两天(一天模拟自由生活,一天实际自由生活)。分析了四种佩戴依从性类型:“正常佩戴”、“不依从佩戴”、“未佩戴但携带”和“未佩戴且静止”。通过查看第一人称视角相机的图像获得这四种依从性类型的真实情况。用于依从性检测的特征包括加速度标准差、平均俯仰角和翻滚角以及连续两幅图像的均方误差。这些特征被用于训练三个随机森林分类器:1)基于加速度计的、2)基于图像的、3)加速度计和图像相结合的。在留一法交叉验证中,使用组合分类器获得了令人满意的佩戴依从性测量准确率(89.24%)。该研究中依从佩戴的平均时长为9小时,标准差为2小时,占总时长的70.96%。此方法可用于计算AIM - 2的佩戴和未佩戴时间,并有可能扩展到其他设备。该研究还包括对传感器负担和隐私问题的评估。调查结果提出了一些可用于提高佩戴依从性的建议。