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Preventive medicine · Aug 2023
Application of internet of things data processing based on machine learning in community sports detection.
- Zeyang Yin, Zheng Li, and Hongbo Li.
- Faculty of Sports and Health, Linyi University, Linyi 276000, Shandong, China; Philippine Christian University Center for International Education, Manila 0900, Philippines.
- Prev Med. 2023 Aug 1; 173: 107603107603.
AbstractDue to the rapid development of the IoT ecosystem, a large amount of IoT data has been generated. However, in the current development process of the Internet of Things, how to ensure data security is a key issue. Traditional IoT security protection is relatively basic. With the increase of data size, these facilities need to be further improved in terms of computing, information security, storage information, and stability. However, traditional security and privacy protection methods are often insufficient for large topology structures. Blockchain is based on distributed networks, characterized by monotonous and decentralized data. Blockchain also provides a new approach to encrypting IoT security information. This article introduces blockchain technology into the Internet of Things, which can prevent reliance on centralized servers and effectively protect internet data and information security. Then this article also analyzed the motion recognition and detection of community sports, as well as the widespread application of computer vision and machine learning technologies in various fields such as computer mining and data security. Motion detection technology is very important in the field of computer vision and has applications in various real-world scenarios. This article studies new ideas for information encryption in the computer Internet of Things, and also analyzes machine learning and motion detection systems and applies them to community sports, improving the development of community sports.Copyright © 2023 Elsevier Inc. All rights reserved.
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