Evaluation of 3D markerless motion capture system accuracy during skate skiing on a treadmill

In this study, we developed a deep learning-based 3D markerless motion capture system for skate skiing on a treadmill and evaluated its accuracy against marker-based motion capture during G1 and G3 skating techniques. Participants performed roller skiing trials on a skiing treadmill. Trials were recorded with two synchronized video cameras (100 Hz). We then trained a custom model using DeepLabCut, and the skiing movements were analyzed using both DeepLabCut-based markerless motion capture and marker-based motion capture systems. We statistically compared joint centers and joint vector angles between the methods. The results demonstrated a high level of agreement for joint vector angles, with mean differences ranging from -2.47° to 3.69°. For joint center positions and toe placements, mean differences ranged from 24.0 to 40.8 mm. This level of accuracy suggests that our markerless approach could be useful as a skiing coaching tool. The method presents interesting opportunities for capturing and extracting value from large amounts of data without the need for markers attached to the skier and expensive cameras.
© Copyright 2024 Bioengineering. MDPI. All rights reserved.

Bibliographic Details
Subjects:
Notations:endurance sports
Tagging:künstliche Intelligenz Kinematik Skating Rollski
Published in:Bioengineering
Language:English
Published: 2024
Online Access:https://doi.org/10.3390/bioengineering11020136
Volume:11
Issue:2
Pages:1-16
Document types:article
Level:advanced