Classification of Tennis Actions Using Deep Learning

Recent advances of deep learning makes it possible to identify specific events in videos with greater precision. This has great relevance in sports like tennis in order to e.g., automatically collect game statistics, or replay actions of specific interest for game strategy or player improvements. In...

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Main Authors Hovad, Emil, Hougaard-Jensen, Therese, Clemmensen, Line Katrine Harder
Format Journal Article
LanguageEnglish
Published 04.02.2024
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Abstract Recent advances of deep learning makes it possible to identify specific events in videos with greater precision. This has great relevance in sports like tennis in order to e.g., automatically collect game statistics, or replay actions of specific interest for game strategy or player improvements. In this paper, we investigate the potential and the challenges of using deep learning to classify tennis actions. Three models of different size, all based on the deep learning architecture SlowFast were trained and evaluated on the academic tennis dataset THETIS. The best models achieve a generalization accuracy of 74 %, demonstrating a good performance for tennis action classification. We provide an error analysis for the best model and pinpoint directions for improvement of tennis datasets in general. We discuss the limitations of the data set, general limitations of current publicly available tennis data-sets, and future steps needed to make progress.
AbstractList Recent advances of deep learning makes it possible to identify specific events in videos with greater precision. This has great relevance in sports like tennis in order to e.g., automatically collect game statistics, or replay actions of specific interest for game strategy or player improvements. In this paper, we investigate the potential and the challenges of using deep learning to classify tennis actions. Three models of different size, all based on the deep learning architecture SlowFast were trained and evaluated on the academic tennis dataset THETIS. The best models achieve a generalization accuracy of 74 %, demonstrating a good performance for tennis action classification. We provide an error analysis for the best model and pinpoint directions for improvement of tennis datasets in general. We discuss the limitations of the data set, general limitations of current publicly available tennis data-sets, and future steps needed to make progress.
Author Hougaard-Jensen, Therese
Hovad, Emil
Clemmensen, Line Katrine Harder
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  givenname: Therese
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  fullname: Hougaard-Jensen, Therese
  organization: Department of Mathematics and Computer Science, Technical University of Denmark, Richard Petersens Plads, Building 324, 2800 Kgs. Lyngby, Denmark
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  givenname: Line Katrine Harder
  surname: Clemmensen
  fullname: Clemmensen, Line Katrine Harder
  organization: Department of Mathematics and Computer Science, Technical University of Denmark, Richard Petersens Plads, Building 324, 2800 Kgs. Lyngby, Denmark
BackLink https://doi.org/10.48550/arXiv.2402.02545$$DView paper in arXiv
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Snippet Recent advances of deep learning makes it possible to identify specific events in videos with greater precision. This has great relevance in sports like tennis...
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Computer Science - Learning
Title Classification of Tennis Actions Using Deep Learning
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