刷牙数据及其在人类活动识别应用中的潜在用途分析:数据集

Z. Hussain, D. Waterworth, Murtadha M. N. Aldeer, W. Zhang, Quan Z. Sheng
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引用次数: 3

摘要

在本文中,我们使用附着在牙刷上的可穿戴传感器来描述和分析刷牙活动的时间序列数据集。研究人员收集了17名参与者一周内在5个不同地点刷牙的数据。该数据集包括62次刷牙会话,分别使用电动牙刷和手动牙刷,每种刷牙方法都有牙刷附着和可穿戴传感器。每次会话的平均持续时间为2分钟。其中一个传感器装置安装在刷子的手柄上,而另一个则作为手表戴在参与者身上。我们以200 Hz的采样率从3轴加速度计和3轴陀螺仪采集数据。大部分数据都已贴上标签。我们使用光谱分析研究了数据的特征,并进行了预处理管道,以生成用于训练支持向量机分类器的特征。我们能够以98.6%的准确率确定下颌的哪个部分被刷过。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toothbrushing data and analysis of its potential use in human activity recognition applications: dataset
In this paper, we describe and analyze a time-series dataset from toothbrushing activity using brush-attached and wearable sensors. The data was collected from 17 participants when they brushed their teeth over one week in 5 different locations. The dataset consists of 62 toothbrushing sessions for each of the brush-attached and wearable sensor approaches, using both electric and manual brushes. The average duration of each session is 2 minutes. One sensor device was attached to the handle of the brush while the other was worn by the participants as a wrist-watch. We collected the data from a 3-axis accelerometer and a 3-axis gyroscope at a 200 Hz sampling rate. Most of the data has been labelled. We investigated the characteristics of the data using spectral analysis and performed a pre-processing pipeline in order to generate features used to train a Support Vector Machine Classifier. We were able to identify which part of the jaw was being brushed with 98.6% accuracy.
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