Vision-based system identification and 3D keypoint discovery using dynamics constraints
This paper introduces V-SysId, a novel method that enables simultaneous keypoint discovery, 3D system identification, and extrinsic camera calibration from an unlabeled video taken from a static camera, using only the family of equations of motion of the object of interest as weak supervision. V-Sys...
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Zusammenfassung: | This paper introduces V-SysId, a novel method that enables simultaneous
keypoint discovery, 3D system identification, and extrinsic camera calibration
from an unlabeled video taken from a static camera, using only the family of
equations of motion of the object of interest as weak supervision. V-SysId
takes keypoint trajectory proposals and alternates between maximum likelihood
parameter estimation and extrinsic camera calibration, before applying a
suitable selection criterion to identify the track of interest. This is then
used to train a keypoint tracking model using supervised learning. Results on a
range of settings (robotics, physics, physiology) highlight the utility of this
approach. |
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DOI: | 10.48550/arxiv.2109.05928 |