智能手机加速度计数据驱动方法识别日常生活活动:比较研究

Q2 Health Professions
Faisal Hussain , Norberto Jorge Goncalves , Daniel Alexandre , Paulo Jorge Coelho , Carlos Albuquerque , Valderi Reis Quietinho Leithardt , Ivan Miguel Pires
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引用次数: 0

摘要

智能手机已经成为我们日常生活中不可或缺的一部分,影响着我们日常生活的各个方面,从叫醒闹钟到管理日常生活活动。如今,几乎所有的智能手机都有内置的加速度传感器。由于智能手机在我们日常生活中的使用显著增加,在本研究中,我们专注于利用智能手机加速度计的潜力来识别人类的日常生活活动,旨在利用智能手机的可用性和便利性。我们利用智能手机加速度计的数据从数据收集到日常生活活动识别。为了实现这一目标,我们首先收集了25名志愿者在进行五项日常生活活动(adl)时的智能手机加速度计数据,即:下楼、上楼、跑步、站立和步行。在此之后,我们从智能手机的加速度计数据中提取了15个统计特征,以有效地分类5个参考adl。然后应用数据预处理技术,即数据清洗和特征提取。之后,我们训练了9个常用的机器学习模型来识别5个adl。最后,我们评估和比较了所有九个ML模型的性能,以识别每个活动,并分析了这些训练过的ML模型的性能,以识别所有五个adl。评估结果显示,Adaboost (AB)分类器优于所有其他ML模型,具有100%的曲线下面积(AUC),精度,召回率,准确度和识别五个adl的f1分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A smartphone accelerometer data-driven approach to recognize activities of daily life: A comparative study

Smartphones have become an indispensable part of our everyday life, influencing various aspects of our routines, from wake-up alarms to managing daily life activities. Nowadays, almost every smartphone has a built-in accelerometer sensor. Motivated by the notable increase in smartphone usage in our everyday life, in this research, we focus on harnessing the potential of smartphone accelerometers to recognize human daily life activities, aiming to leverage the usability and convenience of smartphones. We used smartphone accelerometer data from data collection to daily life activity recognition. To accomplish this, we first collected the smartphone's accelerometer data while performing five activities of daily living (ADLs) namely: moving downstairs, upstairs, running, standing, and walking, from 25 volunteers through a mobile application. After this, we extracted 15 statistical features from the smartphone's accelerometer data to efficiently classify the five referred ADLs. We then applied data pre-processing techniques, i.e., data cleaning and feature extraction. Afterward, we trained nine commonly used machine learning models to recognize five ADLs. Finally, we evaluated and compared the performance of all nine ML models to recognize each activity and analyzed the performance of these trained ML models to identify all five ADLs. The evaluated results revealed that the Adaboost (AB) classifier outperformed all other ML models with 100% area under the curve (AUC), precision, recall, accuracy, and F1-score for recognizing the five ADLs.

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来源期刊
Smart Health
Smart Health Computer Science-Computer Science Applications
CiteScore
6.50
自引率
0.00%
发文量
81
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