Toward Automatically Labeling Situations in Soccer
Publikation: Beiträge in Zeitschriften › Zeitschriftenaufsätze › Forschung › begutachtet
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in: Frontiers in Sports and Active Living, Jahrgang 3, 725431, 03.11.2021.
Publikation: Beiträge in Zeitschriften › Zeitschriftenaufsätze › Forschung › begutachtet
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TY - JOUR
T1 - Toward Automatically Labeling Situations in Soccer
AU - Fassmeyer, Dennis
AU - Anzer, Gabriel
AU - Bauer, Pascal
AU - Brefeld, Ulf
N1 - This publication was funded by the Open Access Publication Fund of Leuphana University Lüneburg. We would like to thank the German Football Association (DFB) for providing the data for this study.
PY - 2021/11/3
Y1 - 2021/11/3
N2 - We study the automatic annotation of situations in soccer games. At first sight, this translates nicely into a standard supervised learning problem. However, in a fully supervised setting, predictive accuracies are supposed to correlate positively with the amount of labeled situations: more labeled training data simply promise better performance. Unfortunately, non-trivially annotated situations in soccer games are scarce, expensive and almost always require human experts; a fully supervised approach appears infeasible. Hence, we split the problem into two parts and learn (i) a meaningful feature representation using variational autoencoders on unlabeled data at large scales and (ii) a large-margin classifier acting in this feature space but utilize only a few (manually) annotated examples of the situation of interest. We propose four different architectures of the variational autoencoder and empirically study the detection of corner kicks, crosses and counterattacks. We observe high predictive accuracies above 90% AUC irrespectively of the task.
AB - We study the automatic annotation of situations in soccer games. At first sight, this translates nicely into a standard supervised learning problem. However, in a fully supervised setting, predictive accuracies are supposed to correlate positively with the amount of labeled situations: more labeled training data simply promise better performance. Unfortunately, non-trivially annotated situations in soccer games are scarce, expensive and almost always require human experts; a fully supervised approach appears infeasible. Hence, we split the problem into two parts and learn (i) a meaningful feature representation using variational autoencoders on unlabeled data at large scales and (ii) a large-margin classifier acting in this feature space but utilize only a few (manually) annotated examples of the situation of interest. We propose four different architectures of the variational autoencoder and empirically study the detection of corner kicks, crosses and counterattacks. We observe high predictive accuracies above 90% AUC irrespectively of the task.
KW - labeling situations
KW - soccer
KW - sports analytics
KW - tracking data
KW - variational autoencoders
KW - Informatics
KW - Business informatics
UR - http://www.scopus.com/inward/record.url?scp=85119428473&partnerID=8YFLogxK
U2 - 10.3389/fspor.2021.725431
DO - 10.3389/fspor.2021.725431
M3 - Journal articles
C2 - 34805978
AN - SCOPUS:85119428473
VL - 3
JO - Frontiers in Sports and Active Living
JF - Frontiers in Sports and Active Living
SN - 2642-9367
SN - 2624-9367
M1 - 725431
ER -