Classification of Activities of Daily Living for Older Adults Using Machine Learning and Fixed Time Windowing Technique

被引:0
作者
Nieto-Vallejo, Andres Eduardo [1 ]
Parra-Rodriguez, Carlos Alberto [2 ]
Ramirez-Perez, Omar [1 ]
机构
[1] Pontificia Univ Javeriana, Dept Diseno, Bogota 110231, Colombia
[2] Pontificia Univ Javeriana, Dept Elect, Bogota 110231, Colombia
关键词
Sensors; Intelligent sensors; Temperature sensors; Windows; Older adults; Feature extraction; Smart homes; Activities of daily living (ADLs); classification; human activity recognition; machine learning; unobtrusive sensors; ACTIVITY RECOGNITION; PEOPLE; RISK;
D O I
10.1109/JSEN.2023.3330630
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
The classification of activities of daily living (ADLs) in the home of older adults makes it possible to identify risk situations and changes in behavior that may be associated with some type of problem. This information allows caregivers and health professionals to take action when these types of situations are detected. Although many machine learning classification techniques have been proposed, the effectiveness of the solution in a real-world context remains unclear in most cases due to the large number of sensors required, the type of sensors used which may pose privacy issues, and the assumption of considering only segmented sensor events for each activity before training the models. This article presents an evaluation of different machine learning techniques using fixed time windows to extract spatiotemporal features and classify ten human activities in a real smart home with unobtrusive sensors using the Aruba CASAS dataset. The three classification techniques that achieved better performance were random forest, XGBoost, and support vector machine (SVM), achieving an accuracy of 97% with our best model, outperforming other approaches from the literature that were using the same dataset under similar conditions. The proposed classification techniques were also evaluated under a more realistic scenario by reducing the amount of hardware required and using an additional class labeled "Other" to consider all raw sensor events, including those that do not belong to any specific activity, achieving an accuracy of 89%, outperforming other approaches from the literature using the same dataset under similar conditions.
引用
收藏
页码:31513 / 31522
页数:10
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