Deep Whole-Body Control: Learning a Unified Policy for Manipulation and Locomotion

10/18/2022
by   Zipeng Fu, et al.
6

An attached arm can significantly increase the applicability of legged robots to several mobile manipulation tasks that are not possible for the wheeled or tracked counterparts. The standard hierarchical control pipeline for such legged manipulators is to decouple the controller into that of manipulation and locomotion. However, this is ineffective. It requires immense engineering to support coordination between the arm and legs, and error can propagate across modules causing non-smooth unnatural motions. It is also biological implausible given evidence for strong motor synergies across limbs. In this work, we propose to learn a unified policy for whole-body control of a legged manipulator using reinforcement learning. We propose Regularized Online Adaptation to bridge the Sim2Real gap for high-DoF control, and Advantage Mixing exploiting the causal dependency in the action space to overcome local minima during training the whole-body system. We also present a simple design for a low-cost legged manipulator, and find that our unified policy can demonstrate dynamic and agile behaviors across several task setups. Videos are at https://maniploco.github.io

READ FULL TEXT

page 1

page 2

page 7

page 8

page 14

page 16

research
06/22/2020

dm_control: Software and Tasks for Continuous Control

The dm_control software package is a collection of Python libraries and ...
research
05/04/2023

Causal Policy Gradient for Whole-Body Mobile Manipulation

Developing the next generation of household robot helpers requires combi...
research
04/17/2023

Continuous Versatile Jumping Using Learned Action Residuals

Jumping is essential for legged robots to traverse through difficult ter...
research
08/13/2019

Multi-Agent Manipulation via Locomotion using Hierarchical Sim2Real

Manipulation and locomotion are closely related problems that are often ...
research
09/30/2022

Efficiently Learning Small Policies for Locomotion and Manipulation

Neural control of memory-constrained, agile robots requires small, yet h...
research
09/12/2018

Reinforcement Learning in Topology-based Representation for Human Body Movement with Whole Arm Manipulation

Moving a human body or a large and bulky object can require the strength...
research
03/03/2021

Design of an Affordable Prosthetic Arm Equipped with Deep Learning Vision-Based Manipulation

Many amputees throughout the world are left with limited options to pers...

Please sign up or login with your details

Forgot password? Click here to reset