Development and evaluation of a deep learning based markerless motion capture system
This study presented a deep learning based markerless motion capture workflow and evaluated performance against marker-based motion capture during overground running. Multi-view high speed (200 Hz) image data were collected concurrently with marker-based motion capture (ground-truth data) permitting a direct comparison between methods. Lower limb kinematic data for six participants demonstrated high levels of agreement for lower limb joint angles with average RMSE ranging between 2.5° - 4.4° for hip sagittal and frontal plane motion, and 4.2° - 5.2° for knee and ankle motion. These differences generally fall within the known uncertainties of marker-based motion capture, suggesting that our markerless approach could be used for appropriate biomechanics applications. While there is a need for high quality open-access datasets to further facilitate performance improvements, markerless motion capture technology continues to improve; presenting exciting opportunities for biomechanics researchers and practitioners to capture large amounts of high quality, ecologically valid data both in and out of the laboratory setting.
© Copyright 2021 ISBS Proceedings Archive (Michigan). Northern Michigan University. Published by International Society of Biomechanics in Sports. All rights reserved.
| Subjects: | |
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| Notations: | technical and natural sciences training science |
| Tagging: | markerless deep learning künstliche Intelligenz |
| Published in: | ISBS Proceedings Archive (Michigan) |
| Language: | English |
| Published: |
Canberra
International Society of Biomechanics in Sports
2021
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| Online Access: | https://commons.nmu.edu/isbs/vol39/iss1/32 |
| Volume: | 39 |
| Issue: | 1 |
| Pages: | Article 32 |
| Document types: | congress proceedings |
| Level: | advanced |