Markerless Motion Capture for Biomechanical Whole-Body Kinematic Estimation in Infants
Divya Joshi, J.D. Peiffer, Colleen Peyton, R. James Cotton

TL;DR
This study evaluates three state-of-the-art pose estimation frameworks on infant videos to assess their accuracy for biomechanical analysis, highlighting their potential and limitations for early motor development assessment.
Contribution
It systematically compares pose estimation methods on infant data and demonstrates the feasibility of biomechanical modeling using these estimates.
Findings
Sapiens achieved the lowest reprojection error (22.8 pixels) and highest geometric consistency (0.82).
SAM 3D Body provided the most comprehensive 3D information for kinematic reconstruction.
Biomechanical models fitted to SAM 3D estimates can distinguish infant movement patterns related to motor development.
Abstract
arly identification of motor impairment in infancy relies on expert visual assessment of spontaneous movement, motivating the development of automated, objective alternatives. One promising approach is using computer vision, which benefits from high quality pose estimation from video. In this study, we systematically evaluated three state-of-the-art pose estimation frameworks (MeTRAbs-ACAE, SAM 3D Body, and Sapiens) on 100 videos over 13 sessions of 8 infants recorded with a multi-view markerless motion capture system. We quantified keypoint detection accuracy using reprojection error, geometric consistency, and Procrustes-aligned 3D position error, and demonstrated proof-of-concept for fitting an inverse kinematic framework to infant data. While Sapiens achieved the lowest reprojection error and highest geometric consistency of the methods evaluated (22.8 pixels and 0.82,…
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