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Scaling up SoccerNet with multi-view spatial localization and re-identification.
Cioppa, Anthony; Deliège, Adrien; Giancola, Silvio; Ghanem, Bernard; Van Droogenbroeck, Marc.
Afiliação
  • Cioppa A; University of Liège, Montefiore Institute, Quartier Polytech 1, Allée de la découverte 1, 4000, Liège, Belgium. anthony.cioppa@uliege.be.
  • Deliège A; University of Liège, Montefiore Institute, Quartier Polytech 1, Allée de la découverte 1, 4000, Liège, Belgium. adrien.deliege@uliege.be.
  • Giancola S; King Abdullah University of Science and Technology, Image and Video Understanding Laboratory, 23955, Thuwal, Saudi Arabia. silvio.giancola@kaust.edu.sa.
  • Ghanem B; King Abdullah University of Science and Technology, Image and Video Understanding Laboratory, 23955, Thuwal, Saudi Arabia.
  • Van Droogenbroeck M; University of Liège, Montefiore Institute, Quartier Polytech 1, Allée de la découverte 1, 4000, Liège, Belgium.
Sci Data ; 9(1): 355, 2022 06 21.
Article em En | MEDLINE | ID: mdl-35729183
Soccer videos are a rich playground for computer vision, involving many elements, such as players, lines, and specific objects. Hence, to capture the richness of this sport and allow for fine automated analyses, we release SoccerNet-v3, a major extension of the SoccerNet dataset, providing a wide variety of spatial annotations and cross-view correspondences. SoccerNet's broadcast videos contain replays of important actions, allowing us to retrieve a same action from different viewpoints. We annotate those live and replay action frames showing same moments with exhaustive local information. Specifically, we label lines, goal parts, players, referees, teams, salient objects, jersey numbers, and we establish player correspondences between the views. This yields 1,324,732 annotations on 33,986 soccer images, making SoccerNet-v3 the largest dataset for multi-view soccer analysis. Derived tasks may benefit from these annotations, like camera calibration, player localization, team discrimination and multi-view re-identification, which can further sustain practical applications in augmented reality and soccer analytics. Finally, we provide Python codes to easily download our data and access our annotations.

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2022 Tipo de documento: Article