Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Improving Global Motion Estimation in Sparse IMU-based Motion Capture with Physics

About

By learning human motion priors, motion capture can be achieved by 6 inertial measurement units (IMUs) in recent years with the development of deep learning techniques, even though the sensor inputs are sparse and noisy. However, human global motions are still challenging to be reconstructed by IMUs. This paper aims to solve this problem by involving physics. It proposes a physical optimization scheme based on multiple contacts to enable physically plausible translation estimation in the full 3D space where the z-directional motion is usually challenging for previous works. It also considers gravity in local pose estimation which well constrains human global orientations and refines local pose estimation in a joint estimation manner. Experiments demonstrate that our method achieves more accurate motion capture for both local poses and global motions. Furthermore, by deeply integrating physics, we can also estimate 3D contact, contact forces, joint torques, and interacting proxy surfaces.

Xinyu Yi, Shaohua Pan, Feng Xu• 2025

Related benchmarks

TaskDatasetResultRank
Human Motion CaptureTotalCapture (test)
JPE (Joint Position Error)43.1
12
Full-body motion estimationPRISM (test)
PA-MPJPE31.29
6
Full-body motion estimationUnderPressure (test)
PA-MPJPE17.41
6
Full-body motion estimationPSU-TMM100 (test)
PA-MPJPE50.28
6
Showing 4 of 4 rows

Other info

Follow for update