Posts tagged Samuel Pfrommer*
ContactNets: Learning Discontinuous Contact Dynamics with Smooth, Implicit Representations

Common methods for learning robot dynamics assume motion is continuous, causing unrealistic model predictions for systems undergoing discontinuous impact and stiction behavior. We resolve this conflict by implicitly encoding these discontinuities as inter-body signed distance and contact-frame Jacobians. Our method, ContactNets, can predict realistic impact, non-penetration, and stiction when trained on 60 seconds of real-world data.

Paper - Video - CoRL Talk (5 min) - Code

Read More