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Automatic classification of daily fluid intake

机译:每日液体摄入的自动分类

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摘要

Despite the potential health benefits of being able to monitor and log one's food and drink intake, manually performing this task is notoriously hard. While researchers are still exploring methods of automating this process for food, less work has been done in automatically classifying beverage intake. In this paper, we present a novel method that utilizes optical, ion selective electrical pH, and conductivity sensors in order to sense and classify liquid in a cup in a practical way. We describe two experiments, one that uses a high end commercial off-the-shelf spectrometer, and the other which uses a cheap sensor package that we engineered. Results show both that this method is feasible and relatively accurate (up to 79% classification for 68 different drinks), but also that we would be able to build this in such a way as to make it practical for real-world deployment. We describe the vision for building a sensor rich cup capable of determining the kind of liquid a person is drinking, as well as the opportunities that the success of such sensors may open.
机译:尽管能够监测和记录一个人的食物和饮料摄入量的潜在健康益处,但手动执行这项任务是众所周知的。虽然研究人员仍在探索自动化这种食物的方法,但在自动分类饮料摄入量时已经完成了更少的工作。在本文中,我们提出了一种利用光学,离子选择性电pH和电导率传感器的新方法,以便以实际的方式感测和分类液体中的液体。我们描述了一个使用高端商业现成光谱仪的实验,以及我们设计的廉价传感器包。结果显示这种方法可行,相对准确(68种不同饮品的分类高达79%),也可以以这种方式建立这一点,以使其成为现实世界部署的实用性。我们描述了建立一个能够确定人饮用的液体的传感器富杯的传感器的愿景,以及这种传感器的成功可能打开的机会。

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