TL;DR
SOMA is a neural network that automatically labels marker-based optical motion capture data without calibration, using simulated training data and advanced architecture to improve accuracy and robustness over existing methods.
Contribution
The paper introduces SOMA, a novel neural network that automatically labels mocap point clouds without calibration, leveraging simulated data and a specialized architecture.
Findings
Outperforms existing methods in accuracy and robustness
Automatically labels over 8 hours of archival mocap data
Outputs SMPL-X body models from diverse datasets
Abstract
Marker-based optical motion capture (mocap) is the "gold standard" method for acquiring accurate 3D human motion in computer vision, medicine, and graphics. The raw output of these systems are noisy and incomplete 3D points or short tracklets of points. To be useful, one must associate these points with corresponding markers on the captured subject; i.e. "labelling". Given these labels, one can then "solve" for the 3D skeleton or body surface mesh. Commercial auto-labeling tools require a specific calibration procedure at capture time, which is not possible for archival data. Here we train a novel neural network called SOMA, which takes raw mocap point clouds with varying numbers of points, labels them at scale without any calibration data, independent of the capture technology, and requiring only minimal human intervention. Our key insight is that, while labeling point clouds is highly…
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