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An Asymmetrical Acoustic Field Detection System for Daily Tooth Brushing Monitoring

机译:用于日常刷牙监测的非对称声场检测系统

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In this paper, we propose a tooth brushing monitoring system based on acoustic inputs through an asymmetrical sound-field detector. This detector consists of a throat microphone and a Bluetooth earphone equipped on the user's neck and ear, respectively. This system can capture unique acoustic signals generated by the movement of the toothbrush on the surfaces of teeth via the detector. The throat microphone captures the brushing sound travelling through gums, bones, and muscles, which forms unique patterns with less attenuation than the sound travelling through the air. The Bluetooth earphone captures the brushing sound through the air. The tooth surface is divided into 16 parts for detection. By adopting machine learning models with the input of acoustic features from both time and frequency domains, we build a high accuracy detector to distinguish the brushing events happened at each of the 16 parts of the tooth surface. We employ Support Vector Machine (SVM), Hidden Markov Model (HMM), K-Means, C4.5 and Random Forest (RF) to evaluate the performance of our detection system. Experiments show that the RF model performs the best and achieves an average accuracy of 85.69%. Based on the pre- trained model, we develop an Android-based APP to monitor the user's daily tooth brushing time and help the user form a good habit of tooth brushing.
机译:在本文中,我们提出了一种通过非对称声场检测器基于声音输入的牙刷监控系统。该检测器由分别安装在用户脖子和耳朵上的喉咙麦克风和蓝牙耳机组成。该系统可以通过检测器捕获牙刷在牙齿表面上的运动所产生的独特声音信号。喉咙麦克风捕获通过牙龈,骨骼和肌肉传播的刷牙声音,形成的独特模式具有比通过空气传播的声音更少的衰减。蓝牙耳机可捕捉空气中的刷牙声音。牙齿表面分为16个部分进行检测。通过采用机器学习模型,并从时域和频域中输入声学特征,我们构建了一个高精度检测器,以区分在牙齿表面16个部分中的每个处发生的刷牙事件。我们采用支持向量机(SVM),隐马尔可夫模型(HMM),K-Means,C4.5和随机森林(RF)来评估我们的检测系统的性能。实验表明,RF模型表现最佳,平均准确度达到85.69%。基于预先训练的模型,我们开发了一个基于Android的APP来监视用户的日常刷牙时间,并帮助用户养成良好的刷牙习惯。

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