Published September 5, 2022 | Version v1
Dataset Open

SoccerMon: A Large-Scale Multivariate Soccer Athlete Health, Performance, and Position Monitoring Dataset

  • 1. ROR icon Simula Metropolitan Center for Digital Engineering
  • 2. ROR icon UiT The Arctic University of Norway
  • 3. UiT Norges arktiske universitet Det helsevitenskapelige fakultet
  • 4. Simula Research Laboratory AS

Description

Data analysis for performance optimization and injury prevention is of tremendous interest for sports at various levels and the scientific community. However, sports data are often sparse and hard to obtain due to legal restrictions, unwillingness to share, and lack of personnel resources to be assigned to the tedious process of data curation. These constraints make it difficult to develop automated systems for analysis, which require large datasets for learning. We therefore present SoccerMon, the largest soccer athlete dataset available today containing both subjective and objective metrics, collected from two different elite women's soccer teams over two years. Our dataset contains 33,849 subjective reports and 10,075 objective reports, the latter including over six billion GPS position measurements. Our initial experiments show how various metrics are correlated, and demonstrate the potential benefits of artificial intelligence-based modeling. SoccerMon can not only play a valuable role in developing better analysis and prediction systems for soccer, but also inspire similar data collection activities in other domains which can benefit from subjective athlete reports, GPS position information, and/or time-series data in general.

Files

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