Document details

KPI: Collective Behavior in Football

Author(s): Marcelino, Rui ; Sampaio, Jaime ; Amichay, Guy ; Gonçalves, Bruno ; Couzin, Iain ; Mate, Nagy

Date: 2022

Persistent ID: http://hdl.handle.net/10174/30682

Origin: Repositório Científico da Universidade de Évora


Description

This chapter presents the need to explore advanced methodologies that can process positional data in football and potentially provide information about how the players’ movements are related to each other. The players’ high-resolution trajectories were used to calculate spatio-temporal correlation-based metrics with other players (teammates and opponents) and the ball, in order to identify highly correlated segments (HCS). This metric seems to be promising to identify differences between the players and, thus, bringing up the concept that each player and team has a unique behavioral pattern – a ‘fingerprint’. Therefore, these metrics could potentially serve as valuable performance indicators in the future, with applications ranging from talent identification to player scouting. In a broader context, team sports could open up new directions for quantitative analyses of human collective behavior.

Document Type Book part
Language Portuguese
facebook logo  linkedin logo  twitter logo 
mendeley logo

Related documents

No related documents