4.4 Article

Predicting Activities of Daily Living for the Coming Time Period in Smart Homes

期刊

IEEE TRANSACTIONS ON HUMAN-MACHINE SYSTEMS
卷 53, 期 1, 页码 228-238

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/THMS.2022.3176213

关键词

Sensors; Smart homes; Intelligent sensors; Predictive models; Deep learning; Hidden Markov models; Activity recognition; Activity prediction; deep neural networks (DNNs); multilabel classification; smart home

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Activity prediction is crucial in smart homes, especially in predicting activities that will occur within a certain time period. Our proposed deep learning model effectively addresses this problem and provides sufficient preparation time for the smart home system.
Activity prediction aims to predict what activities will occur in the future. In smart homes, to facilitate the daily living of the residents, automated or assistive services are provided. To provide these services, the ability of activity prediction is necessary. When we make a prediction, most of the existing works focus on predicting information about the next activity. However, in a smart home environment, compared with just predicting information about the next activity, another type of activity prediction problem has more practical value: predicting what activities will occur in the coming time period of a certain length. The necessity of this type of prediction is due to the purpose of the smart homes and the character of the activities. Many activities in smart homes need preparation time before being performed. Through this type of prediction, activities could be predicted sufficient time before being performed, and there will be adequate time for the smart home system to prepare corresponding automated or assistive services. As more than one activity could occur within the time period in which the prediction is made, this problem is a multilabel classification problem. In this article, we first give a formulation of the problem. Then, we propose a deep learning model to address it. The proposed model consists of the convolutional part, the long short-term memory layer, and the multilabel output layer. Experiments on real-world datasets show the effectiveness of our model.

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