CVFeb 27, 2024

Differentiable Biomechanics Unlocks Opportunities for Markerless Motion Capture

arXiv:2402.17192v116 citationsh-index: 1ICRR
Originality Synthesis-oriented
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This work addresses markerless motion capture for biomechanics research and clinical applications, representing an incremental advancement by applying existing differentiable simulators to a new domain.

The paper tackled the problem of markerless motion capture by using differentiable physics simulators to fit inverse kinematics to data, improving reprojection error and accurately estimating spatial step parameters compared to an instrumented walkway.

Recent developments have created differentiable physics simulators designed for machine learning pipelines that can be accelerated on a GPU. While these can simulate biomechanical models, these opportunities have not been exploited for biomechanics research or markerless motion capture. We show that these simulators can be used to fit inverse kinematics to markerless motion capture data, including scaling the model to fit the anthropomorphic measurements of an individual. This is performed end-to-end with an implicit representation of the movement trajectory, which is propagated through the forward kinematic model to minimize the error from the 3D markers reprojected into the images. The differential optimizer yields other opportunities, such as adding bundle adjustment during trajectory optimization to refine the extrinsic camera parameters or meta-optimization to improve the base model jointly over trajectories from multiple participants. This approach improves the reprojection error from markerless motion capture over prior methods and produces accurate spatial step parameters compared to an instrumented walkway for control and clinical populations.

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