Probabilistic Framework for Constrained Manipulations and Task and Motion Planning under Uncertainty

03/09/2020
by   Jung-Su Ha, et al.
0

Logic-Geometric Programming (LGP) is a powerful motion and manipulation planning framework, which represents hierarchical structure using logic rules that describe discrete aspects of problems, e.g., touch, grasp, hit, or push, and solves the resulting smooth trajectory optimization. The expressive power of logic allows LGP for handling complex, large-scale sequential manipulation and tool-use planning problems. In this paper, we extend the LGP formulation to stochastic domains. Based on the control-inference duality, we interpret LGP in a stochastic domain as fitting a mixture of Gaussians to the posterior path distribution, where each logic profile defines a single Gaussian path distribution. The proposed framework enables a robot to prioritize various interaction modes and to acquire interesting behaviors such as contact exploitation for uncertainty reduction, eventually providing a composite control scheme that is reactive to disturbance. The supplementary video can be found at https://youtu.be/CEaJdVlSZyo

READ FULL TEXT

page 1

page 6

research
09/13/2022

A Gaussian variational inference approach to motion planning

We propose a Gaussian variational inference framework for the motion pla...
research
12/24/2022

Demonstration-guided Optimal Control for Long-term Non-prehensile Planar Manipulation

Long-term non-prehensile planar manipulation is a challenging task for r...
research
06/25/2023

Sequential Manipulation Planning for Over-actuated UAMs

We investigate the sequential manipulation planning problem for unmanned...
research
07/01/2023

Enhancing Dexterity in Robotic Manipulation via Hierarchical Contact Exploration

We present a hierarchical planning framework for dexterous robotic manip...
research
08/29/2023

Stochastic Motion Planning as Gaussian Variational Inference: Theory and Algorithms

We consider the motion planning problem under uncertainty and address it...
research
03/10/2022

Sequence-of-Constraints MPC: Reactive Timing-Optimal Control of Sequential Manipulation

Task and Motion Planning has made great progress in solving hard sequent...
research
02/15/2022

Active Uncertainty Learning for Human-Robot Interaction: An Implicit Dual Control Approach

Predictive models are effective in reasoning about human motion, a cruci...

Please sign up or login with your details

Forgot password? Click here to reset