FreeCap: Hybrid Calibration-Free Motion Capture in Open Environments
About
We propose a novel hybrid calibration-free method FreeCap to accurately capture global multi-person motions in open environments. Our system combines a single LiDAR with expandable moving cameras, allowing for flexible and precise motion estimation in a unified world coordinate. In particular, We introduce a local-to-global pose-aware cross-sensor human-matching module that predicts the alignment among each sensor, even in the absence of calibration. Additionally, our coarse-to-fine sensor-expandable pose optimizer further optimizes the 3D human key points and the alignments, it is also capable of incorporating additional cameras to enhance accuracy. Extensive experiments on Human-M3 and FreeMotion datasets demonstrate that our method significantly outperforms state-of-the-art single-modal methods, offering an expandable and efficient solution for multi-person motion capture across various applications.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Human Motion Estimation | FreeMotion-MV | J Err (L)68.78 | 2 | |
| Human Motion Estimation | HuMMan-MV | Joint Error (L)72.77 | 2 |