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Main Authors: Bunker, Rory, Duy, Vo Nguyen Le, Tabei, Yasuo, Takeuchi, Ichiro, Fujii, Keisuke
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2311.16564
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author Bunker, Rory
Duy, Vo Nguyen Le
Tabei, Yasuo
Takeuchi, Ichiro
Fujii, Keisuke
author_facet Bunker, Rory
Duy, Vo Nguyen Le
Tabei, Yasuo
Takeuchi, Ichiro
Fujii, Keisuke
contents Improvements in tracking technology through optical and computer vision systems have enabled a greater understanding of the movement-based behaviour of multiple agents, including in team sports. In this study, a Multi-Agent Statistically Discriminative Sub-Trajectory Mining (MA-Stat-DSM) method is proposed that takes a set of binary-labelled agent trajectory matrices as input and incorporates Hausdorff distance to identify sub-matrices that statistically significantly discriminate between the two groups of labelled trajectory matrices. Utilizing 2015/16 SportVU NBA tracking data, agent trajectory matrices representing attacks consisting of the trajectories of five agents (the ball, shooter, last passer, shooter defender, and last passer defender), were truncated to correspond to the time interval following the receipt of the ball by the last passer, and labelled as effective or ineffective based on a definition of attack effectiveness that we devise in the current study. After identifying appropriate parameters for MA-Stat-DSM by iteratively applying it to all matches involving the two top- and two bottom-placed teams from the 2015/16 NBA season, the method was then applied to selected matches and could identify and visualize the portions of plays, e.g., involving passing, on-, and/or off-the-ball movements, which were most relevant in rendering attacks effective or ineffective.
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publishDate 2023
record_format arxiv
spellingShingle Multi-agent statistical discriminative sub-trajectory mining and an application to NBA basketball
Bunker, Rory
Duy, Vo Nguyen Le
Tabei, Yasuo
Takeuchi, Ichiro
Fujii, Keisuke
Multiagent Systems
Improvements in tracking technology through optical and computer vision systems have enabled a greater understanding of the movement-based behaviour of multiple agents, including in team sports. In this study, a Multi-Agent Statistically Discriminative Sub-Trajectory Mining (MA-Stat-DSM) method is proposed that takes a set of binary-labelled agent trajectory matrices as input and incorporates Hausdorff distance to identify sub-matrices that statistically significantly discriminate between the two groups of labelled trajectory matrices. Utilizing 2015/16 SportVU NBA tracking data, agent trajectory matrices representing attacks consisting of the trajectories of five agents (the ball, shooter, last passer, shooter defender, and last passer defender), were truncated to correspond to the time interval following the receipt of the ball by the last passer, and labelled as effective or ineffective based on a definition of attack effectiveness that we devise in the current study. After identifying appropriate parameters for MA-Stat-DSM by iteratively applying it to all matches involving the two top- and two bottom-placed teams from the 2015/16 NBA season, the method was then applied to selected matches and could identify and visualize the portions of plays, e.g., involving passing, on-, and/or off-the-ball movements, which were most relevant in rendering attacks effective or ineffective.
title Multi-agent statistical discriminative sub-trajectory mining and an application to NBA basketball
topic Multiagent Systems
url https://arxiv.org/abs/2311.16564