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Food intake monitoring: An acoustical approach to automated food intake activity detection and classification of consumed food

机译:食物摄入量监控:一种用于自动食物摄入量检测和食用食物分类的声学方法

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摘要

Obesity and nutrition-related diseases are currently growing challenges for medicine. A precise and timesaving method for food intake monitoring is needed. For this purpose, an approach based on the classification of sounds produced during food intake is presented. Sounds are recorded non-invasively by miniature microphones in the outer ear canal. A database of 51 participants eating seven types of food and consuming one drink has been developed for algorithm development and model training. The database is labeled manually using a protocol with introductions for annotation. The annotation procedure is evaluated using Cohen's kappa coefficient. The food intake activity is detected by the comparison of the signal energy of in-ear sounds to environmental sounds recorded by a reference microphone. Hidden Markov models are used for the recognition of single chew or swallowing events. Intake cycles are modeled as event sequences in finite-state grammars. Classification of consumed food is realized by a finite-state grammar decoder based on the Viterbi algorithm. We achieved a detection accuracy of 83% and a food classification accuracy of 79% on a test set of 10% of all records. Our approach faces the need of monitoring the time and occurrence of eating. With differentiation of consumed food, a first step toward the goal of meal weight estimation is taken.
机译:肥胖和与营养有关的疾病目前对医学构成越来越大的挑战。需要一种精确且省时的食物摄入监测方法。为此,提出了一种基于食物摄取过程中产生的声音分类的方法。声音通过外耳道中的微型麦克风无创录制。已经开发了一个由51名参与者组成的数据库,该参与者吃了7种食物并喝了一种饮料,用于算法开发和模型训练。使用带有注释批注的协议手动标记数据库。使用Cohen的kappa系数评估注释过程。通过将耳内声音的信号能量与参考麦克风记录的环境声音的信号能量进行比较,可以检测出食物摄入活动。隐藏的马尔可夫模型用于识别单次咀嚼或吞咽事件。摄入周期在有限状态语法中被建模为事件序列。食用食物的分类是通过基于维特比算法的有限状态语法解码器实现的。在所有记录的10%的测试集上,我们实现了83%的检测精度和79%的食品分类精度。我们的方法面临着监控进食时间和发生的需求。随着食用食物的差异化,朝着膳食重量估计目标迈出了第一步。

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