Long-Horizon Prediction and Uncertainty Propagation with Residual Point Contact Learners

09/08/2020
by   Nima Fazeli, et al.
0

The ability to simulate and predict the outcome of contacts is paramount to the successful execution of many robotic tasks. Simulators are powerful tools for the design of robots and their behaviors, yet the discrepancy between their predictions and observed data limit their usability. In this paper, we propose a self-supervised approach to learning residual models for rigid-body simulators that exploits corrections of contact models to refine predictive performance and propagate uncertainty. We empirically evaluate the framework by predicting the outcomes of planar dice rolls and compare it's performance to state-of-the-art techniques.

READ FULL TEXT

page 1

page 5

research
10/13/2017

Fundamental Limitations in Performance and Interpretability of Common Planar Rigid-Body Contact Models

The ability to reason about and predict the outcome of contacts is param...
research
03/11/2018

Data-Augmented Contact Model for Rigid Body Simulation

Accurately modeling contact behaviors for real-world, near-rigid materia...
research
10/16/2017

Learning Data-Efficient Rigid-Body Contact Models: Case Study of Planar Impact

In this paper we demonstrate the limitations of common rigid-body contac...
research
07/30/2019

Towards Dynamic Simulation Guided Optimal Design of Tumbling Microrobots

Design of robots at the small scale is a trial-and-error based process, ...
research
06/21/2023

Modelling human seat contact interaction for vibration comfort

The seat to head vibration transmissibility depends on various character...
research
02/06/2023

Geometry of contact: contact planning for multi-legged robots via spin models duality

Contact planning is crucial in locomoting systems.Specifically, appropri...

Please sign up or login with your details

Forgot password? Click here to reset