Multi-task learning for jersey number recognition in ice hockey

Identifying players in sports videos by recognizing their jersey numbers is a challenging task in computer vision. We have designed and implemented a multi-task learning network for jersey number recognition. In order to train a network to recognize jersey numbers, two output label representations are used (1) Holistic - considers the entire jersey number as one class, and (2) Digit-wise - considers the two digits in a jersey number as two separate classes. The proposed network learns both holistic and digit-wise representations through a multi-task loss function. We determine the optimal weights to be assigned to holistic and digit-wise losses through an ablation study. Experimental results demonstrate that the proposed multi-task learning network performs better than the constituent holistic and digit-wise single-task learning networks.
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Bibliographic Details
Subjects:
Notations:sport games technical and natural sciences
Tagging:deep learning maschinelles Lernen Mustererkennung
Published in:ACM International Conference Proceeding Series
Language:English
Published: New York Association for Computing Machinery 2021
Online Access:https://dl.acm.org/doi/10.1145/3475722.3482794
Pages:11-15
Document types:article
Level:advanced