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Masked autoencoder for multiagent trajectories

Research output: Journal contributionsJournal articlesResearchpeer-review

Abstract

Automatically labeling trajectories of multiple agents is key to behavioral analyses but usually requires a large amount of manual annotations. This also applies to the domain of team sport analyses. In this paper, we specifically show how pretraining transformer models improves the classification performance on tracking data from professional soccer. For this purpose, we propose a novel self-supervised masked autoencoder for multiagent trajectories to effectively learn from only a few labeled sequences. Our approach builds upon a factorized transformer architecture for multiagent trajectory data and employs a masking scheme on the level of individual agent trajectories. As a result, our model allows for a reconstruction of masked trajectory segments while being permutation equivariant with respect to the agent trajectories. In addition to experiments on soccer, we demonstrate the usefulness of the proposed pretraining approach on multiagent pose data from entomology. In contrast to related work, our approach is conceptually much simpler, does not require handcrafted features and naturally allows for permutation invariance in downstream tasks.
Original languageEnglish
Article number44
JournalMachine Learning
Volume114
Issue number2
Number of pages18
ISSN0885-6125
DOIs
Publication statusPublished - 02.2025

Bibliographical note

Publisher Copyright:
© The Author(s) 2025.

Research areas and keywords

  • Business informatics
  • Informatics
  • Masked autoencoder
  • Multiagent trajectories
  • Self-supervised learning
  • soccer
  • tracking data
  • Transformer

ASJC Scopus Subject Areas

  • Artificial Intelligence
  • Software

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  • Masked Autoencoder Pretraining for Event Classification in Elite Soccer

    Rudolph, Y. & Brefeld, U., 26.02.2024, Machine Learning and Data Mining for Sports Analytics: 10th International Workshop, MLSA 2023, Revised Selected Papers. Brefeld, U., Davis, J., Van Haaren, J. & Zimmermann, A. (eds.). Cham: Springer Nature Switzerland AG, p. 24-35 12 p. (Communications in Computer and Information Science; vol. 2035).

    Research output: Contributions to collected editions/worksArticle in conference proceedingsResearchpeer-review

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