Spatiotemporal Multi-Camera Calibration using Freely Moving People
Journal:
arXiv
Published Date:
Feb 18, 2025
Abstract
We propose a novel method for spatiotemporal multi-camera calibration using
freely moving people in multiview videos. Since calibrating multiple cameras
and finding matches across their views are inherently interdependent,
performing both in a unified framework poses a significant challenge. We
address these issues as a single registration problem of matching two sets of
3D points, leveraging human motion in dynamic multi-person scenes. To this end,
we utilize 3D human poses obtained from an off-the-shelf monocular 3D human
pose estimator and transform them into 3D points on a unit sphere, to solve the
rotation, time offset, and the association alternatingly. We employ a
probabilistic approach that can jointly solve both problems of aligning
spatiotemporal data and establishing correspondences through soft assignment
between two views. The translation is determined by applying coplanarity
constraints. The pairwise registration results are integrated into a multiview
setup, and then a nonlinear optimization method is used to improve the accuracy
of the camera poses, temporal offsets, and multi-person associations. Extensive
experiments on synthetic and real data demonstrate the effectiveness and
flexibility of the proposed method as a practical marker-free calibration tool.