Learning Switching Criteria for Sim2Real Transfer of Robotic Fabric Manipulation Policies

07/02/2022
by   Satvik Sharma, et al.
0

Simulation-to-reality transfer has emerged as a popular and highly successful method to train robotic control policies for a wide variety of tasks. However, it is often challenging to determine when policies trained in simulation are ready to be transferred to the physical world. Deploying policies that have been trained with very little simulation data can result in unreliable and dangerous behaviors on physical hardware. On the other hand, excessive training in simulation can cause policies to overfit to the visual appearance and dynamics of the simulator. In this work, we study strategies to automatically determine when policies trained in simulation can be reliably transferred to a physical robot. We specifically study these ideas in the context of robotic fabric manipulation, in which successful sim2real transfer is especially challenging due to the difficulties of precisely modeling the dynamics and visual appearance of fabric. Results in a fabric smoothing task suggest that our switching criteria correlate well with performance in real. In particular, our confidence-based switching criteria achieve average final fabric coverage of 87.2-93.7 https://tinyurl.com/lsc-case for code and supplemental materials.

READ FULL TEXT

page 1

page 6

research
10/18/2017

Sim-to-Real Transfer of Robotic Control with Dynamics Randomization

Simulations are attractive environments for training agents as they prov...
research
07/28/2023

Robust Visual Sim-to-Real Transfer for Robotic Manipulation

Learning visuomotor policies in simulation is much safer and cheaper tha...
research
08/01/2018

Learning Dexterous In-Hand Manipulation

We use reinforcement learning (RL) to learn dexterous in-hand manipulati...
research
09/27/2020

Predicting Sim-to-Real Transfer with Probabilistic Dynamics Models

We propose a method to predict the sim-to-real transfer performance of R...
research
11/05/2018

Quantifying the Reality Gap in Robotic Manipulation Tasks

We quantify the accuracy of various simulators compared to a real world ...
research
05/24/2020

Learning visual servo policies via planner cloning

Learning control policies for visual servoing in novel environments is a...
research
09/23/2019

Deep Imitation Learning of Sequential Fabric Smoothing Policies

Sequential pulling policies to flatten and smooth fabrics have applicati...

Please sign up or login with your details

Forgot password? Click here to reset