CVDec 17, 2025

See It Before You Grab It: Deep Learning-based Action Anticipation in Basketball

arXiv:2512.15386v1
Originality Synthesis-oriented
AI Analysis

It addresses the lack of action anticipation in sports analytics, enabling real-time broadcasting and post-game analysis tools, but is incremental as it applies existing methods to a new domain-specific task.

This work tackles the problem of predicting which team will gain possession of the ball after a shot attempt in basketball broadcast videos, introducing a new dataset of 100,000 clips and reporting baseline results using deep learning methods.

Computer vision and video understanding have transformed sports analytics by enabling large-scale, automated analysis of game dynamics from broadcast footage. Despite significant advances in player and ball tracking, pose estimation, action localization, and automatic foul recognition, anticipating actions before they occur in sports videos has received comparatively little attention. This work introduces the task of action anticipation in basketball broadcast videos, focusing on predicting which team will gain possession of the ball following a shot attempt. To benchmark this task, a new self-curated dataset comprising 100,000 basketball video clips, over 300 hours of footage, and more than 2,000 manually annotated rebound events is presented. Comprehensive baseline results are reported using state-of-the-art action anticipation methods, representing the first application of deep learning techniques to basketball rebound prediction. Additionally, two complementary tasks, rebound classification and rebound spotting, are explored, demonstrating that this dataset supports a wide range of video understanding applications in basketball, for which no comparable datasets currently exist. Experimental results highlight both the feasibility and inherent challenges of anticipating rebounds, providing valuable insights into predictive modeling for dynamic multi-agent sports scenarios. By forecasting team possession before rebounds occur, this work enables applications in real-time automated broadcasting and post-game analysis tools to support decision-making.

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