SoccerNet 2025 Challenges Results
Silvio Giancola, Anthony Cioppa, Marc Guti\'errez-P\'erez, Jan Held, Carlos Hinojosa, Victor Joos, Arnaud Leduc, Floriane Magera, Karen Sanchez, Vladimir Somers, Artur Xarles, Antonio Agudo, Alexandre Alahi, Olivier Barnich, Albert Clap\'es, Christophe De Vleeschouwer

TL;DR
The SoccerNet 2025 Challenges advance football video understanding through four tasks, providing datasets, benchmarks, and community progress insights to foster reproducible research in sports computer vision.
Contribution
This paper introduces new challenges, datasets, and evaluation protocols for football video analysis, promoting progress in multiple vision tasks within sports AI.
Findings
Top solutions achieved significant accuracy improvements.
Community demonstrated progress across all four tasks.
Open datasets and benchmarks facilitate reproducible research.
Abstract
The SoccerNet 2025 Challenges mark the fifth annual edition of the SoccerNet open benchmarking effort, dedicated to advancing computer vision research in football video understanding. This year's challenges span four vision-based tasks: (1) Team Ball Action Spotting, focused on detecting ball-related actions in football broadcasts and assigning actions to teams; (2) Monocular Depth Estimation, targeting the recovery of scene geometry from single-camera broadcast clips through relative depth estimation for each pixel; (3) Multi-View Foul Recognition, requiring the analysis of multiple synchronized camera views to classify fouls and their severity; and (4) Game State Reconstruction, aimed at localizing and identifying all players from a broadcast video to reconstruct the game state on a 2D top-view of the field. Across all tasks, participants were provided with large-scale annotated…
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