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Robot Learning from Randomized Simulations: A Review

Authors :
Muratore, Fabio
Ramos, Fabio
Turk, Greg
Yu, Wenhao
Gienger, Michael
Peters, Jan
Publication Year :
2021

Abstract

The rise of deep learning has caused a paradigm shift in robotics research, favoring methods that require large amounts of data. Unfortunately, it is prohibitively expensive to generate such data sets on a physical platform. Therefore, state-of-the-art approaches learn in simulation where data generation is fast as well as inexpensive and subsequently transfer the knowledge to the real robot (sim-to-real). Despite becoming increasingly realistic, all simulators are by construction based on models, hence inevitably imperfect. This raises the question of how simulators can be modified to facilitate learning robot control policies and overcome the mismatch between simulation and reality, often called the 'reality gap'. We provide a comprehensive review of sim-to-real research for robotics, focusing on a technique named 'domain randomization' which is a method for learning from randomized simulations.<br />Comment: submitted to Frontiers in Robotics and AI

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2111.00956
Document Type :
Working Paper