ANALYSIS OF THE APPLICATION OF COMPUTER VISION IN SPORTS
Abstract and keywords
Abstract:
With the development of computer technologies, there was a significant growth of complexity of tasks solved by video analysis, which allowed computer vision methods to solve problems of determining human movements in real time. This paper reviews the practical usage of computer vision technology in sports. The authors analyze existing computer vision systems and their application in such areas as training and competitive process, television broadcasts, refereeing, injury prevention in team and individual sports. This paper reviews advantages and limitations of usage computer vision technologies in sports, its potential to improve sports training and analyze their effectiveness. Finally, this review summarizes and concludes on the importance of computer vision in sports and its prospects for the future development of this area. In general, this article is of interest to sports coaches, researchers and all interested parties wishing to learn about the latest trends in the use of computer vision in sports

Keywords:
computer vision, artificial intelligence, innovative technologies, sports
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References

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