Deep learning enabled exercise monitoring system for sustainable online education of future teacher-trainers

Autor: Nurlan Omarov, Bakhytzhan Omarov, Quwanishbay Mamutov, Zhanibek Kissebayev, Almas Anarbayev, Adilbay Tastanov, Zhandos Yessirkepov
Jazyk: angličtina
Rok vydání: 2024
Předmět:
Zdroj: Frontiers in Education, Vol 9 (2024)
Druh dokumentu: article
ISSN: 2504-284X
DOI: 10.3389/feduc.2024.1385205
Popis: IntroductionIn recent years, the importance of effective training methods for future physical education teacher-trainers has grown significantly, particularly in the context of online education.MethodsThis research introduces a pioneering Deep Learning Enabled Exercise Monitoring System aimed at enhancing the online education experience for these trainers. The study employs a skeleton-based approach utilizing the PoseNet model to monitor and provide real-time feedback on physical exercises such as pull-ups, push-ups, sit-ups, squats, and bicep workouts. The system achieves a remarkable accuracy rate of 99.8% by analyzing key skeletal points extracted from video frames, addressing the challenge of ensuring correct exercise execution without physical supervision–a common issue in remote learning environments.ResultsTo validate the system’s effectiveness, data was collected through a series of controlled experiments involving various exercises. The system’s design focuses on low-resource requirements, making it accessible and sustainable for diverse educational contexts.DiscussionThe findings demonstrate the system’s potential to revolutionize online physical education by offering a balance of technological innovation and educational utility. This research not only elevates the quality of training for future educators but also contributes to the broader field of sustainable digital education technologies.
Databáze: Directory of Open Access Journals