A Review of Robot Learning for Manipulation: Challenges, Representations, and Algorithms - Robotics Institute Carnegie Mellon University

A Review of Robot Learning for Manipulation: Challenges, Representations, and Algorithms

Oliver Kroemer, Scott Niekum, and George Konidaris
Journal Article, Journal of Machine Learning Research, Vol. 22, No. 30, pp. 1 - 82, 2021

Abstract

A key challenge in intelligent robotics is creating robots that are capable of directly in- teracting with the world around them to achieve their goals. The last decade has seen substantial growth in research on the problem of robot manipulation, which aims to exploit the increasing availability of affordable robot arms and grippers to create robots capable of directly interacting with the world to achieve their goals. Learning will be central to such autonomous systems, as the real world contains too much variation for a robot to expect to have an accurate model of its environment, the objects in it, or the skills required to manipulate them, in advance. We aim to survey a representative subset of that research which uses machine learning for manipulation. We describe a formalization of the robot manipulation learning problem that synthesizes existing research into a single coherent framework and highlight the many remaining research opportunities and challenges.

BibTeX

@article{Kroemer-2021-128846,
author = {Oliver Kroemer and Scott Niekum and George Konidaris},
title = {A Review of Robot Learning for Manipulation: Challenges, Representations, and Algorithms},
journal = {Journal of Machine Learning Research},
year = {2021},
month = {January},
volume = {22},
number = {30},
pages = {1 - 82},
}