Improving data acquisition speed and accuracy in sport using neural networks

J Sports Sci. 2021 Mar;39(5):513-522. doi: 10.1080/02640414.2020.1832735. Epub 2020 Oct 14.

Abstract

Video analysis is used in sport to derive kinematic variables of interest but often relies on time-consuming tracking operations. The purpose of this study was to determine speed, accuracy and reliability of 2D body landmark digitisation by a neural network (NN), compared with manual digitisation, for the glide phase in swimming. Glide variables including glide factor; instantaneous hip angles, trunk inclines and horizontal velocities were selected as they influence performance and are susceptible to digitisation propagation error. The NN was "trained" on 400 frames of 2D glide video from a sample of eight elite swimmers. Four glide trials of another swimmer were used to test agreement between the NN and a manual operator for body marker position data of the knee, hip and shoulder, and the effect of digitisation on glide variables. The NN digitised body landmarks 233 times faster than the manual operator, with digitising root-mean-square-error of ~4-5 mm. High accuracy and reliability was found between body position and glide variable data between the two methods with relative error ≤5.4% and correlation coefficients >0.95 for all variables. NNs could be applied to greatly reduce the time of kinematic analysis in sports and facilitate rapid feedback of performance measures.

Keywords: Swimming; applied biomechanics; digitisation; performance analysis; video analysis.

Publication types

  • Comparative Study

MeSH terms

  • Adolescent
  • Adult
  • Biomechanical Phenomena
  • Female
  • Hip Joint / physiology
  • Humans
  • Knee Joint / physiology
  • Male
  • Neural Networks, Computer*
  • Reproducibility of Results
  • Shoulder Joint / physiology
  • Swimming / physiology*
  • Time and Motion Studies*
  • Young Adult