What Makes a Dribble Successful? Insights From 3D Pose Tracking Data
- URL: http://arxiv.org/abs/2506.22503v1
- Date: Wed, 25 Jun 2025 15:01:30 GMT
- Title: What Makes a Dribble Successful? Insights From 3D Pose Tracking Data
- Authors: Michiel Schepers, Pieter Robberechts, Jan Van Haaren, Jesse Davis,
- Abstract summary: This study explores how pose tracking data can improve our understanding of dribbling skills.<n>We extract novel pose-based features from 1,736 dribbles in the 2022/23 Champions League season.<n>Our results indicate that features capturing the attacker's balance and the alignment of the orientation between the attacker and defender are informative for predicting dribble success.
- Score: 15.488712139146381
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Data analysis plays an increasingly important role in soccer, offering new ways to evaluate individual and team performance. One specific application is the evaluation of dribbles: one-on-one situations where an attacker attempts to bypass a defender with the ball. While previous research has primarily relied on 2D positional tracking data, this fails to capture aspects like balance, orientation, and ball control, limiting the depth of current insights. This study explores how pose tracking data (capturing players' posture and movement in three dimensions) can improve our understanding of dribbling skills. We extract novel pose-based features from 1,736 dribbles in the 2022/23 Champions League season and evaluate their impact on dribble success. Our results indicate that features capturing the attacker's balance and the alignment of the orientation between the attacker and defender are informative for predicting dribble success. Incorporating these pose-based features on top of features derived from traditional 2D positional data leads to a measurable improvement in model performance.
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