Farooq Muhammad, Sazonov Edward
Department of Electrical and Computer Engineering, University of Alabama, Tuscaloosa, AL 35401, USA.
Sensors (Basel). 2016 Jul 11;16(7):1067. doi: 10.3390/s16071067.
Presence of speech and motion artifacts has been shown to impact the performance of wearable sensor systems used for automatic detection of food intake. This work presents a novel wearable device which can detect food intake even when the user is physically active and/or talking. The device consists of a piezoelectric strain sensor placed on the temporalis muscle, an accelerometer, and a data acquisition module connected to the temple of eyeglasses. Data from 10 participants was collected while they performed activities including quiet sitting, talking, eating while sitting, eating while walking, and walking. Piezoelectric strain sensor and accelerometer signals were divided into non-overlapping epochs of 3 s; four features were computed for each signal. To differentiate between eating and not eating, as well as between sedentary postures and physical activity, two multiclass classification approaches are presented. The first approach used a single classifier with sensor fusion and the second approach used two-stage classification. The best results were achieved when two separate linear support vector machine (SVM) classifiers were trained for food intake and activity detection, and their results were combined using a decision tree (two-stage classification) to determine the final class. This approach resulted in an average F1-score of 99.85% and area under the curve (AUC) of 0.99 for multiclass classification. With its ability to differentiate between food intake and activity level, this device may potentially be used for tracking both energy intake and energy expenditure.
语音和运动伪影的存在已被证明会影响用于自动检测食物摄入量的可穿戴传感器系统的性能。这项工作提出了一种新型可穿戴设备,即使在用户进行身体活动和/或说话时也能检测食物摄入量。该设备由一个放置在颞肌上的压电应变传感器、一个加速度计和一个连接到眼镜镜腿的数据采集模块组成。在10名参与者进行包括安静坐着、说话、坐着进食、行走进食和行走等活动时收集数据。压电应变传感器和加速度计信号被分成3秒不重叠的时间段;为每个信号计算四个特征。为了区分进食和未进食,以及久坐姿势和身体活动,提出了两种多类分类方法。第一种方法使用具有传感器融合的单个分类器,第二种方法使用两阶段分类。当针对食物摄入量和活动检测训练两个单独的线性支持向量机(SVM)分类器,并使用决策树(两阶段分类)组合它们的结果以确定最终类别时,取得了最佳结果。这种方法在多类分类中平均F1分数为99.85%,曲线下面积(AUC)为0.99。凭借其区分食物摄入量和活动水平的能力,该设备可能潜在地用于跟踪能量摄入和能量消耗。