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A Robust Classification Scheme for Detection of Food Intake Through Non-Invasive Monitoring of Chewing

机译:一种鲁棒的分类方案,用于通过非侵入性监测咀嚼的食物摄入量

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Automatic methods for food intake detection are needed to objectively monitor ingestive behavior of individuals in a free living environment. In this study, a pattern recognition system was developed for detection of food intake through the classification of jaw motion. A total of 7 subjects participated in laboratory experiments that involved several activities of daily living: talking, walking, reading, resting and food intake while being instrumented with a wearable jaw motion sensor. Inclusion of such activities provided a high variability to the sensor signal and thus challenged the classification task. A forward feature selection process decided on the most appropriate set of features to represent the chewing signal. Linear and RBF Support Vector Machine (SVM) classifiers were evaluated to find the most suitable classifier that can generalize the high variability of the input signal. Results showed that an average accuracy of 90.52% can be obtained using Linear SVM with a time resolution of 15 sec.
机译:需要自动用于食物进气检测方法,以客观地监测自由生活环境中个人的摄取行为。在这项研究中,开发了一种模式识别系统,用于通过钳口运动的分类检测食物摄入量。共有7个受试者参加了实验室实验,涉及日常生活的几项活动:谈话,行走,阅读,休息和食物摄入,同时用可穿戴钳口运动传感器进行仪表。包括这些活动为传感器信号提供了高可变性,因此挑战了分类任务。前向特征选择过程决定最合适的特征集来表示咀嚼信号。评估线性和RBF支持向量机(SVM)分类器以查找最合适的分类器,可以概括输入信号的高可变性。结果表明,使用线性SVM可以获得90.52%的平均精度,具有15秒的时间分辨率。

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