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From Movement to Events: Improving Soccer Match Annotations

  • Manuel SteinEmail author
  • Daniel Seebacher
  • Tassilo Karge
  • Tom Polk
  • Michael Grossniklaus
  • Daniel A. Keim
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 11295)

Abstract

Match analysis has become an important task in everyday work at professional soccer clubs in order to improve team performance. Video analysts regularly spend up to several days analyzing and summarizing matches based on tracked and annotated match data. Although there already exists extensive capabilities to track the movement of players and the ball from multimedia data sources such as video recordings, there is no capability to sufficiently detect dynamic and complex events within these data. As a consequence, analysts have to rely on manually created annotations, which are very time-consuming and expensive to create. We propose a novel method for the semi-automatic definition and detection of events based entirely on movement data of players and the ball. Incorporating Allen’s interval algebra into a visual analytics system, we enable analysts to visually define as well as search for complex, hierarchical events. We demonstrate the usefulness of our approach by quantitatively comparing our automatically detected events with manually annotated events from a professional data provider as well as several expert interviews. The results of our evaluation show that the required annotation time for complete matches by using our system can be reduced to a few seconds while achieving a similar level of performance.

Keywords

Visual analytics Sport analytics Event analysis 

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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  • Manuel Stein
    • 1
    Email author
  • Daniel Seebacher
    • 1
  • Tassilo Karge
    • 1
  • Tom Polk
    • 1
  • Michael Grossniklaus
    • 1
  • Daniel A. Keim
    • 1
  1. 1.University of KonstanzKonstanzGermany

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