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Frontiers and Applications of AI-powered Modern Football Monitoring Technology
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SUO Xiang ,TANG Weidi ,LI Xuhui ,LI Zhen ,MAO Lijuan 1
Abstract:Modern football intelligent monitoring technology utilizes computer vision and data analysis methods to
monitor and analyze events and data on the field, aiming to optimize team tactics, integrate training plans, and
evaluate players' performance. Compared to other monitoring technologies, intelligent monitoring technology
minimizes interference with players' technical actions, exhibiting a greater adaptability to the environment. In fine-
grained recognition tasks of individual events such as ball control and passing, intelligent monitoring technology
demonstrates superior performances; while in global tactical analysis and player performance evaluation, it
showcases a precise data mining and intuitive visual analysis. Furthermore, the referee assistance module within
football intelligent monitoring technology contributes to establishing a more objective and accurate refereeing
mechanism, ensuring fairness in competition, enhancing the viewing experience of football matches, and fostering
improvements in refereeing standards.
Keywords:football intelligent monitoring technology; computer vision; big data analysis; technical and tactical
analysis; player's quantitative evaluation; referee assistance system
Authors' addresses: 1. School of Physical Education, Shanghai University of Sport, Shanghai 200438, China;
2. School of Exercise and Health, Shanghai University of Sport, Shanghai 200438, China
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