Exploring the application of knowledge transfer to sports video data.

Journal: Frontiers in sports and active living
Published Date:

Abstract

The application of Artificial Intelligence (AI) and Computer Vision (CV) in sports has generated significant interest in enhancing viewer experience through graphical overlays and predictive analytics, as well as providing valuable insights to coaches. However, more efficient methods are needed that can be applied across different sports without incurring high data annotation or model training costs. A major limitation of training deep learning models on large datasets is the significant resource requirement for reproducing results. Transfer Learning and Zero-Shot Learning (ZSL) offer promising alternatives to this approach. For example, ZSL in player re-identification (a crucial step in more complex sports behavioral analysis) involves re-identifying players in sports videos without having seen examples of those players during the training phase. This study investigates the performance of various ZSL techniques in the context of Rugby League and Netball. We focus on ZSL and player re-identification models that use feature embeddings to measure similarity between players. To support our experiments, we created two comprehensive datasets of broadcast video clips: one with nearly 35,000 frames for Rugby League and another with close to 14,000 frames for Netball, each annotated with player IDs and actions. Our approach leverages pre-trained re-identification models to extract feature embeddings for ZSL evaluation under a challenging testing environmnet. Results demonstrate that models pre-trained on sports player re-identification data outperformed those pre-trained on general person re-identification datasets. Part-based models showed particular promise in handling the challenges of dynamic sports environments, while non-part-based models struggled due to background interference.

Authors

  • Shahrokh Heidari
    IVSLab, The University of Auckland, Auckland, New Zealand.
  • Gibran Zazueta
    UNAM, Monterrey, Mexico.
  • Riki Mitchell
    Riki Consulting, Auckland, New Zealand.
  • David Arturo Soriano Valdez
    UNAM, Monterrey, Mexico.
  • Mitchell Rogers
    IVSLab, The University of Auckland, Auckland, New Zealand.
  • Jiaxuan Wang
    IVSLab, The University of Auckland, Auckland, New Zealand.
  • Ruigeng Wang
    IVSLab, The University of Auckland, Auckland, New Zealand.
  • Marcel Noronha
    One New Zealand Warriors, Auckland, New Zealand.
  • Alfonso Gastelum Strozzi
    UNAM, Monterrey, Mexico.
  • Mengjie Zhang
    Centre for Data Science and Artificial Intelligence, Victoria University of Wellington, Wellington, New Zealand.
  • Patrice Jean Delmas
    IVSLab, The University of Auckland, Auckland, New Zealand.

Keywords

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