Inferring Articulated Rigid Body Dynamics from RGBD Video
- URL: http://arxiv.org/abs/2203.10488v1
- Date: Sun, 20 Mar 2022 08:19:02 GMT
- Title: Inferring Articulated Rigid Body Dynamics from RGBD Video
- Authors: Eric Heiden, Ziang Liu, Vibhav Vineet, Erwin Coumans, Gaurav S.
Sukhatme
- Abstract summary: We introduce a pipeline that combines inverse rendering with differentiable simulation to create digital twins of real-world articulated mechanisms.
Our approach accurately reconstructs the kinematic tree of an articulated mechanism being manipulated by a robot.
- Score: 18.154013621342266
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Being able to reproduce physical phenomena ranging from light interaction to
contact mechanics, simulators are becoming increasingly useful in more and more
application domains where real-world interaction or labeled data are difficult
to obtain. Despite recent progress, significant human effort is needed to
configure simulators to accurately reproduce real-world behavior. We introduce
a pipeline that combines inverse rendering with differentiable simulation to
create digital twins of real-world articulated mechanisms from depth or RGB
videos. Our approach automatically discovers joint types and estimates their
kinematic parameters, while the dynamic properties of the overall mechanism are
tuned to attain physically accurate simulations. Control policies optimized in
our derived simulation transfer successfully back to the original system, as we
demonstrate on a simulated system. Further, our approach accurately
reconstructs the kinematic tree of an articulated mechanism being manipulated
by a robot, and highly nonlinear dynamics of a real-world coupled pendulum
mechanism.
Website: https://eric-heiden.github.io/video2sim
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