AuthorsD. Jha, A. Rauniyar, H. D. Johansen, D. Johansen, M. Riegler, P. Halvorsen and U. Bagci
TitleVideo Analytics in Elite Soccer: A Distributed Computing Perspective
AfilliationMachine Learning
Project(s)Department of Holistic Systems
StatusPublished
Publication TypeProceedings, refereed
Year of Publication2022
Conference NameIEEE Sensor Array and Multichannel Signal Processing Workshop (SAM)
Pagination221-225
Date Published06/2022
PublisherIEEE
Place PublishedTrondheim, Norway
Keywordsanalytics, football, soccer, Video
Abstract



Ubiquitous sensors and Internet of Things (IoT) technologies have revolutionized the sports industry, providing new methodologies for planning, effective coordination of training, and match analysis post game. New methods, including machine learning, image and video processing, have been developed for performance evaluation, allowing the analyst to track the performance of a player in real-time. Following FIFA's 2015 approval of electronics performance and tracking system during games, performance data of a single player or the entire team is allowed to be collected using GPS-based wearables. Data from practice sessions outside the sporting arena is being collected in greater numbers than ever before. Realizing the significance of data in professional soccer, this paper presents video analytics, examines recent state-of-the-art literature in elite soccer, and summarizes existing real-time video analytics algorithms. We also discuss real-time crowdsourcing of the obtained data, tactical and technical performance, distributed computing and its importance in video analytics and propose a future research perspective.
 

URLhttps://ieeexplore.ieee.org/document/9827827
DOI10.1109/SAM53842.2022.9827827
Citation Key42695

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