Contrastive Learning for Sports Video: Unsupervised Player Classification

04/15/2021
by   Maria Koshkina, et al.
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We address the problem of unsupervised classification of players in a team sport according to their team affiliation, when jersey colours and design are not known a priori. We adopt a contrastive learning approach in which an embedding network learns to maximize the distance between representations of players on different teams relative to players on the same team, in a purely unsupervised fashion, without any labelled data. We evaluate the approach using a new hockey dataset and find that it outperforms prior unsupervised approaches by a substantial margin, particularly for real-time application when only a small number of frames are available for unsupervised learning before team assignments must be made. Remarkably, we show that our contrastive method achieves 94 accuracy rising to 97 demonstrate how accurate team classification allows accurate team-conditional heat maps of player positioning to be computed.

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