Optical tracking in team sports

Author:

Rahimian Pegah1,Toka Laszlo2

Affiliation:

1. Budapest University of Technology and Economics , Budapest , Hungary

2. MTA-BME Information Systems Research Group, Faculty of Electrical Engineering and Informatics , Budapest University of Technology and Economics , Budapest , Hungary

Abstract

Abstract Sports analysis has gained paramount importance for coaches, scouts, and fans. Recently, computer vision researchers have taken on the challenge of collecting the necessary data by proposing several methods of automatic player and ball tracking. Building on the gathered tracking data, data miners are able to perform quantitative analysis on the performance of players and teams. With this survey, our goal is to provide a basic understanding for quantitative data analysts about the process of creating the input data and the characteristics thereof. Thus, we summarize the recent methods of optical tracking by providing a comprehensive taxonomy of conventional and deep learning methods, separately. Moreover, we discuss the preprocessing steps of tracking, the most common challenges in this domain, and the application of tracking data to sports teams. Finally, we compare the methods by their cost and limitations, and conclude the work by highlighting potential future research directions.

Funder

Ministry of Innovation and Technology of Hungary

Publisher

Walter de Gruyter GmbH

Subject

Decision Sciences (miscellaneous),Social Sciences (miscellaneous)

Reference68 articles.

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2. Agelet Ruiz, N. 2010. “Tracking of a Basketball Using Multiple Cameras.” PhD Thesis, University of Polytecnica de Catalunya.

3. Alavi, A. 2017. “Investigation into Tracking Football Players from Video Streams Produced by Cameras Set up for TV Broadcasting.” American Journal of Engineering Research 6: 95–104.

4. Arbues, A., C. Ballester, and G. Haro. 2019. “Single-camera Basketball Tracker through Pose and Semantic Feature Fusion.” arXiv preprint, arXiv:1906.02042v2.

5. Beetz, M., S. Gedikli, J. Bandouch, B. Kirchlechner, N. v. Hoyningen Huene, and A. Perzylo. 2007. “Visually Tracking Football Games Based on Tv Broadcasts.” In International Joint Conference on Artificial Intelligence (IJCAI), Vol. 7, 2066–71.

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