IEEE J Biomed Health Inform. 2017 Nov;21(6):1495-1503. doi: 10.1109/JBHI.2016.2640142. Epub 2016 Dec 14.
Several methods have been proposed for automatic and objective monitoring of food intake, but their performance suffers in the presence of speech and motion artifacts. This paper presents a novel sensor system and algorithms for detection and characterization of chewing bouts from a piezoelectric strain sensor placed on the temporalis muscle. The proposed data acquisition device was incorporated into the temple of eyeglasses. The system was tested by ten participants in two part experiments, one under controlled laboratory conditions and the other in unrestricted free-living. The proposed food intake recognition method first performed an energy-based segmentation to isolate candidate chewing segments (instead of using epochs of fixed duration commonly reported in research literature), with the subsequent classification of the segments by linear support vector machine models. On participant level (combining data from both laboratory and free-living experiments), with ten-fold leave-one-out cross-validation, chewing were recognized with average F-score of 96.28% and the resultant area under the curve was 0.97, which are higher than any of the previously reported results. A multivariate regression model was used to estimate chew counts from segments classified as chewing with an average mean absolute error of 3.83% on participant level. These results suggest that the proposed system is able to identify chewing segments in the presence of speech and motion artifacts, as well as automatically and accurately quantify chewing behavior, both under controlled laboratory conditions and unrestricted free-living.
已经提出了几种用于自动和客观监测食物摄入的方法,但在存在语音和运动伪影的情况下,它们的性能会受到影响。本文提出了一种新颖的传感器系统和算法,用于从放置在颞肌上的压电应变传感器检测和表征咀嚼回合。所提出的数据采集设备被纳入眼镜的太阳穴。该系统通过十个参与者在两个部分的实验中进行了测试,一个在受控的实验室条件下,另一个在不受限制的自由生活中。所提出的食物摄入识别方法首先执行基于能量的分割,以隔离候选咀嚼段(而不是使用研究文献中通常报告的固定持续时间的时段),随后通过线性支持向量机模型对段进行分类。在参与者水平上(结合实验室和自由生活实验的数据),十折交叉验证的平均 F 分数为 96.28%,曲线下的面积为 0.97,高于以前报告的任何结果。使用多元回归模型从分类为咀嚼的段中估计咀嚼次数,参与者水平的平均绝对误差为 3.83%。这些结果表明,所提出的系统能够在存在语音和运动伪影的情况下识别咀嚼段,并在受控的实验室条件和不受限制的自由生活中自动准确地量化咀嚼行为。