Learning-based 3D human kinematics estimation using behavioral constraints from activity classification
Daekyum Kim,
Yichu Jin,
Haedo Cho,
Truman Jones,
Yu Meng Zhou,
Ameneh Fadaie,
Dmitry Popov,
Krithika Swaminathan and
Conor J. Walsh ()
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Daekyum Kim: Harvard University
Yichu Jin: Harvard University
Haedo Cho: Harvard University
Truman Jones: Harvard University
Yu Meng Zhou: Harvard University
Ameneh Fadaie: Harvard University
Dmitry Popov: Harvard University
Krithika Swaminathan: Harvard University
Conor J. Walsh: Harvard University
Nature Communications, 2025, vol. 16, issue 1, 1-11
Abstract:
Abstract Inertial measurement units offer a cost-effective, portable alternative to lab-based motion capture systems. However, measuring joint angles and movement trajectories with inertial measurement units is challenging due to signal drift errors caused by biases and noise, which are amplified by numerical integration. Existing approaches use anatomical constraints to reduce drift but require body parameter measurements. Learning-based approaches show promise but often lack accuracy for broad applications (e.g., strength training). Here, we introduce the Activity-in-the-loop Kinematics Estimator, an end-to-end machine learning model incorporating human behavioral constraints for enhanced kinematics estimation using two inertial measurement units. It integrates activity classification with kinematics estimation, leveraging limited movement patterns during specific activities. In dynamic scenarios, our approach achieved trajectory and shoulder joint angle errors under 0.021 m and $$6.5^\circ$$ 6 . 5 ∘ , respectively, 52% and 17% lower than errors without including activity classification. These results highlight accurate motion tracking with minimal inertial measurement units and domain-specific context.
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-58624-6
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DOI: 10.1038/s41467-025-58624-6
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