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Non-invasive monitoring of eating behavior using spectrogram analysis in a wearable necklace

机译:在穿戴式项链中使用频谱图分析对饮食行为进行非侵入式监控

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Food intake levels, hydration, chewing and swallowing rate, and dietary choices are all factors known to impact one's health. This paper presents a novel wearable system in the form of a necklace, which aggregates data from an embedded piezoelectric sensor capable of detecting skin motion in the lower trachea during ingestion. We propose an algorithm based on spectrogram analysis of piezoelectric sensor signals to accurately distinguish between food types such as liquid and solid, hot and cold drinks and hard and soft foods. The necklace transmits data to a smartphone, which performs the processing of the signals, classifies the food type, and provides visual feedback to the user to assist the user in monitoring their eating habits over time. Experimental results demonstrate high classification accuracy of the proposed method, and validate the use of a spectrogram in extracting key features representative of the unique swallow patterns of various foods.
机译:食物摄入量,水合,咀嚼和吞咽率以及饮食选择都是已知会影响人的健康的因素。本文提出了一条项链形式的新型可穿戴系统,该系统可汇总来自嵌入式压电传感器的数据,该传感器能够在摄入过程中检测下气管的皮肤运动。我们提出一种基于对压电传感器信号进行频谱图分析的算法,以准确区分食物类型,例如液体和固体,冷热饮料以及软硬食品。项链将数据传输到智能手机,该智能手机执行信号处理,对食物类型进行分类并向用户提供视觉反馈,以帮助用户随时间监控其饮食习惯。实验结果证明了该方法的高分类精度,并验证了使用频谱图提取代表各种食物独特吞咽模式的关键特征。

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