The development of detailed and accurate analytics is nowadays considered among the essential elements that drive the preparation of a competition. In particular, video analytics contribute by providing both the athletes and the technical team an all-round perspective on the opponent through multiple recordings, in different environmental conditions and configurations, observing the technical and tactical performances across time. However, the chance of collecting video analytics is generally linked to the availability of suitable hardware and software, to collect, store, and analyze the video streams, so as to extract the relevant information. This is often considered as a privilege reserved to professional teams, which can also benefit from the presence of a dedicated personnel assigned to this task. In this paper we present a study that demonstrates that the recent developments in computer vision and machine learning have enabled the possibility of deploying accessible solutions, yet retrieving reasonable and interpretable analytics.

Accessible Video Analytics: the Use Case of Basketball / Conci, N.; De Natale, F. G. B.; Dalponte, M.; Bernabe, S.; Bisagno, N.. - (2022), pp. 185-188. (Intervento presentato al convegno 1st IEEE International Workshop on Sport, Technology and Research, STAR 2022 tenutosi a ita nel 2022) [10.1109/STAR53492.2022.9859710].

Accessible Video Analytics: the Use Case of Basketball

Conci N.;De Natale F. G. B.;Dalponte M.;Bisagno N.
2022-01-01

Abstract

The development of detailed and accurate analytics is nowadays considered among the essential elements that drive the preparation of a competition. In particular, video analytics contribute by providing both the athletes and the technical team an all-round perspective on the opponent through multiple recordings, in different environmental conditions and configurations, observing the technical and tactical performances across time. However, the chance of collecting video analytics is generally linked to the availability of suitable hardware and software, to collect, store, and analyze the video streams, so as to extract the relevant information. This is often considered as a privilege reserved to professional teams, which can also benefit from the presence of a dedicated personnel assigned to this task. In this paper we present a study that demonstrates that the recent developments in computer vision and machine learning have enabled the possibility of deploying accessible solutions, yet retrieving reasonable and interpretable analytics.
2022
2022 IEEE International Workshop on Sport, Technology and Research, STAR 2022 - Proceedings
Piscataway NJ
Institute of Electrical and Electronics Engineers Inc.
978-1-6654-8601-9
Conci, N.; De Natale, F. G. B.; Dalponte, M.; Bernabe, S.; Bisagno, N.
Accessible Video Analytics: the Use Case of Basketball / Conci, N.; De Natale, F. G. B.; Dalponte, M.; Bernabe, S.; Bisagno, N.. - (2022), pp. 185-188. (Intervento presentato al convegno 1st IEEE International Workshop on Sport, Technology and Research, STAR 2022 tenutosi a ita nel 2022) [10.1109/STAR53492.2022.9859710].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/354567
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