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Diet eyeglasses: Recognising food chewing using EMG and smart eyeglasses

机译:饮食镜片:识别使用EMG和智能眼镜的食物咀嚼

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We utilise smart eyeglasses for dietary monitoring, in particular to sense food chewing. Our approach is based on a 3D-printed regular eyeglasses design that could accommodate processing electronics and Electromyography (EMG) electrodes. Electrode positioning was analysed and an optimal electrode placement at the temples was identified. We further compared gel and dry fabric electrodes. For the subsequent analysis, fabric electrodes were attached to the eyeglasses frame. The eyeglasses were used in a data recording study with eight participants eating different foods. Two chewing cycle detection methods and two food classification algorithms were compared. Detection rates for individual chewing cycles reached a precision and recall of 80%. For five foods, classification accuracy for individual chewing cycles varied between 43% and 71%. Majority voting across intake sequences improved accuracy, ranging between 63% and 84%. We concluded that EMG-based chewing analysis using smart eyeglasses can contribute essential chewing structure information to dietary monitoring systems, while the eyeglasses remain inconspicuous and thus could be continuously used.
机译:我们利用智能眼镜进行饮食监测,特别是感知食物咀嚼。我们的方法基于3D印刷的常规眼镜设计,可以容纳处理电子和肌电图(EMG)电极。分析电极定位并识别在寺庙处的最佳电极放置。我们进一步比较了凝胶和干燥织物电极。对于随后的分析,将织物电极连接到眼镜框架上。眼镜用于数据记录研究中,八个参与者吃不同的食物。比较了两种咀嚼循环检测方法和两种食物分类算法。个体咀嚼周期的检测率达到了80%的精确度并召回。对于五种食物,个体咀嚼周期的分类准确性在43%和71%之间变化。大多数投票对摄入序列提高了精度,范围为63%和84%。我们得出结论,使用智能眼镜的基于EMG的咀嚼分析可以促进膳食监测系统的基本咀嚼结构信息,而眼镜保持不起眼,因此可以连续使用。

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