GroundLink: A Dataset Unifying Human Body Movement and Ground Reaction Dynamics
Xingjian Han, Benjamin Senderling, Stanley To, Deepak Kumar, Emily, Whiting, Jun Saito

TL;DR
GroundLink introduces a high-precision dataset of ground reaction forces and centers of pressure synchronized with human motion, enabling data-driven physics modeling for diverse applications.
Contribution
We present GroundLink, a comprehensive dataset of synchronized ground reaction data and motion captures, and a neural network benchmark demonstrating accurate physics prediction from kinematic data.
Findings
GroundLink dataset contains 368 motion trials with 1.59 million frames.
GroundLinkNet accurately predicts ground reaction forces and centers of pressure.
The dataset and models are publicly available for further research.
Abstract
The physical plausibility of human motions is vital to various applications in fields including but not limited to graphics, animation, robotics, vision, biomechanics, and sports science. While fully simulating human motions with physics is an extreme challenge, we hypothesize that we can treat this complexity as a black box in a data-driven manner if we focus on the ground contact, and have sufficient observations of physics and human activities in the real world. To prove our hypothesis, we present GroundLink, a unified dataset comprised of captured ground reaction force (GRF) and center of pressure (CoP) synchronized to standard kinematic motion captures. GRF and CoP of GroundLink are not simulated but captured at high temporal resolution using force platforms embedded in the ground for uncompromising measurement accuracy. This dataset contains 368 processed motion trials (~1.59M…
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