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Application of Behavior Recognition Technology Based on Deep Learning in Elderly Care

Application of Behavior Recognition Technology Based on Deep Learning in Elderly Care
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Author(s): Shihui Zhang (HeBei North University, China), Jing Mi (HeBei North University, China)and Naidi Liu (HeBei North University, China)
Copyright: 2024
Volume: 19
Issue: 1
Pages: 12
Source title: International Journal of Healthcare Information Systems and Informatics (IJHISI)
Editor(s)-in-Chief: Qiang (Shawn) Cheng (University of Kentucky, USA)and Joseph Tan (McMaster University, Canada)
DOI: 10.4018/IJHISI.336548

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Abstract

China is currently one of the countries with the largest elderly population in the world, and the issue of population aging has become a widespread concern. The behavior recognition algorithm based on deep learning is currently the main behavior recognition algorithm and one of the basic technologies in the field of computer vision. In existing research, the method of constructing complex classification models based on manual feature representation can no longer meet the requirements of high recognition accuracy and applicability, and the introduction of deep learning has brought new development directions for behavior recognition. Therefore, this article aims to study how to apply deep learning-based behavior recognition technology more accurately and effectively in the care of elderly people in the context of “artificial intelligence.”

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