Biomechanical Reconstruction with Confidence Intervals from Multiview Markerless Motion Capture
Journal:
arXiv
Published Date:
Feb 10, 2025
Abstract
Advances in multiview markerless motion capture (MMMC) promise high-quality
movement analysis for clinical practice and research. While prior validation
studies show MMMC performs well on average, they do not provide what is needed
in clinical practice or for large-scale utilization of MMMC -- confidence
intervals over specific kinematic estimates from a specific individual analyzed
using a possibly unique camera configuration. We extend our previous work using
an implicit representation of trajectories optimized end-to-end through a
differentiable biomechanical model to learn the posterior probability
distribution over pose given all the detected keypoints. This posterior
probability is learned through a variational approximation and estimates
confidence intervals for individual joints at each moment in a trial, showing
confidence intervals generally within 10-15 mm of spatial error for virtual
marker locations, consistent with our prior validation studies. Confidence
intervals over joint angles are typically only a few degrees and widen for more
distal joints. The posterior also models the correlation structure over joint
angles, such as correlations between hip and pelvis angles. The confidence
intervals estimated through this method allow us to identify times and trials
where kinematic uncertainty is high.