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Food intake detection using autoencoder-based deep neural networks

机译:使用基于自动编码器的深度神经网络进行食物摄入检测

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Wearable systems have the potential to reduce bias and inaccuracy in current dietary monitoring methods. The analysis of food intake sounds provides important guidance for developing an automated diet monitoring system. Most of the attempts in recent years can be ragarded as impractical due to the need for multiple sensors that specialize in swallowing or chewing detection separately. In this study, we provide a unified system for detecting swallowing and chewing activities with a laryngeal microphone placed on the neck, as well as some daily activities such as speech, coughing or throat clearing. Our proposed system is trained on the dataset containing 10 different food items collected from 8 subjects. The spectrograms, which are extracted from the 276 minute records in total, are fed into a deep autoencoder architecture. In the three-class evaluations (chewing, swallowing and rest), we achieve 71.7% of the F-score and 76.3% of the accuracy. These results provide a promising contribution to an automated food monitoring system that will be developed under everyday conditions.
机译:可穿戴系统有可能减少当前饮食监测方法中的偏见和不准确性。食物摄入声音的分析为开发自动饮食监测系统提供了重要的指导。由于需要专门研究吞咽或咀嚼检测的多个传感器,因此近年来的大多数尝试都被认为是不切实际的。在这项研究中,我们提供了一个用于检测吞咽和咀嚼活动的统一系统,该系统可通过将颈部麦克风放在脖子上以及一些日常活动(例如语音,咳嗽或清嗓)来进行检测。我们提出的系统在包含8个受试者的10种不同食物的数据集上进行了训练。从总共276分钟的记录中提取的频谱图被馈入深度自动编码器体系结构中。在三级评估(咀嚼,吞咽和休息)中,我们达到71.7%的F分数和76.3%的准确性。这些结果为将在日常条件下开发的自动食品监测系统提供了有希望的贡献。

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