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Implementing Real-Time Food Intake Detection in a Wearable System Using Accelerometer

机译:使用加速度计在可穿戴系统中实施实时食物进气检测

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The objective of this study was to develop a realtime food intake detection method in a wearable sensor system using an accelerometer sensor. The Automatic Ingestion Monitor v2 (AIM-2) wearable sensor consists of a chewing sensor, accelerometer, camera, microcontroller, battery, and other components. The accelerometer is used to capture signals of chewing and head-movements. Time-domain statistical features were computed from the 3-axis accelerometer signal. A decision tree classifier was trained offline and implemented in the microcontroller to predict food intake events in real-time. The classifier was trained on a dataset collected from 30 free-living volunteers. The classifier achieved a sensitivity of 86.79%, specificity of 96.24%, and F1-score of 57.57% in leave-one-out subject validation. The proposed method was implemented and tested for eight days of free-living data and achieved 97.62% accuracy of eating episode detection. Real-time food intake detection in a wearable sensor system may enable future implementation of just-in-time feedback to the user for improving eating habits and achieving weight-loss.
机译:本研究的目的是使用加速度计传感器在可穿戴传感器系统中开发实时食物进口检测方法。自动摄取监视器V2(AIM-2)可穿戴传感器由咀嚼传感器,加速度计,摄像机,微控制器,电池等组成。加速度计用于捕获咀嚼和头部运动的信号。从3轴加速度计信号计算时域统计特征。决策树分类器训练离线并在微控制器中实现,以实时预测食物进口事件。分类器培训了从30名自由生活志愿者收集的数据集。分类器达到86.79%的敏感性,特异性为96.24%,F1分数为57.57%,休留一次性验证。所提出的方法已经实施和测试了八天的自由生活数据,并达到了饮食检测的97.62%的准确性。可穿戴传感器系统中的实时食物进气检测可以使未来的立即反馈实施给用户,以改善饮食习惯并实现减肥。

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