Applied Sciences (May 2022)

Multi-Output Sequential Deep Learning Model for Athlete Force Prediction on a Treadmill Using 3D Markers

  • Milton Osiel Candela-Leal,
  • Erick Adrián Gutiérrez-Flores,
  • Gerardo Presbítero-Espinosa,
  • Akshay Sujatha-Ravindran,
  • Ricardo Ambrocio Ramírez-Mendoza,
  • Jorge de Jesús Lozoya-Santos,
  • Mauricio Adolfo Ramírez-Moreno

DOI
https://doi.org/10.3390/app12115424
Journal volume & issue
Vol. 12, no. 11
p. 5424

Abstract

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Reliable and innovative methods for estimating forces are critical aspects of biomechanical sports research. Using them, athletes can improve their performance and technique and reduce the possibility of fractures and other injuries. For this purpose, throughout this project, we proceeded to research the use of video in biomechanics. To refine this method, we propose an RNN trained on a biomechanical dataset of regular runners that measures both kinematics and kinetics. The model will allow analyzing, extracting, and drawing conclusions about continuous variable predictions through the body. It marks different anatomical and reflective points (96 in total, 32 per dimension) that will allow the prediction of forces (N) in three dimensions (Fx, Fy, Fz), measured on a treadmill with a force plate at different velocities (2.5 m/s, 3.5 m/s, 4.5 m/s). In order to obtain the best model, a grid search of different parameters that combined various types of layers (Simple, GRU, LSTM), loss functions (MAE, MSE, MSLE), and sampling techniques (down-sampling, up-sampling) helped obtain the best performing model (LSTM, MSE, down-sampling) achieved an average coefficient of determination of 0.68, although when excluding Fz it reached 0.92.

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