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A survey on deep learning architectures in human activities recognition application in sports science, healthcare, and security
Adel, Basant ; Badran, Asmaa ; Elshami, Nada ; Salah, Ahmad ; Fathalla, Ahmed ; Bekhit, Mahmoud
Adel, Basant
Badran, Asmaa
Elshami, Nada
Salah, Ahmad
Fathalla, Ahmed
Bekhit, Mahmoud
Abstract
In a typical human activity recognition (HAR) system, human activities are recognized by collecting data from inertial sensors (i.e., Inertial measurement unit (IMU)) or visual sensors (i.e., cameras). Then, the collected data is labelled with human activities. In turn, the data is used to train machine learning (ML) or deep learning (DL) models. HAR systems are widely used in different applications such as security, healthcare, the Internet of Things (IoT), and sports domains. The highest accuracy rates are achieved by DL models. In this context, we review the recent advancements of HAR systems in three trendy domains, namely, 1) sports science, 2) healthcare, and 3) security. The aim of this review is to reveal the most widely used DL architectures alongside the highest achieved accuracy rates in each of these domains. Both the Convolution Neural Network (CNN) and the Long Short Term Memory (LSTM) architectures achieved the best performance in both fields of sports science and healthcare. In the security field, the best performance was achieved by the adapted VGG-16 model.
Keywords
Deep learning, HAR, Healthcare, Security, Sports science
Date
2022
Type
Conference paper
Journal
Book
Volume
Issue
Page Range
121-134
Article Number
ACU Department
Peter Faber Business School
Faculty of Law and Business
Faculty of Law and Business
Collections
Relation URI
Open Access Status
License
All rights reserved
File Access
Controlled
Notes
© The Author(s), under exclusive license to Springer Nature Switzerland AG 2022.
