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Quantifying the Reality Gap in Robotic Manipulation Tasks

Quantifying the Reality Gap in Robotic Manipulation Tasks

5 November 2018
J. Collins
David Howard
Jurgen Leitner
ArXivPDFHTML

Papers citing "Quantifying the Reality Gap in Robotic Manipulation Tasks"

8 / 8 papers shown
Title
Tolerance of Reinforcement Learning Controllers against Deviations in
  Cyber Physical Systems
Tolerance of Reinforcement Learning Controllers against Deviations in Cyber Physical Systems
Changjian Zhang
Parv Kapoor
Eunsuk Kang
Romulo Meira-Goes
David Garlan
Akila Ganlath
Shatadal Mishra
N. Ammar
42
0
0
24 Jun 2024
Learning to Fold Real Garments with One Arm: A Case Study in Cloud-Based
  Robotics Research
Learning to Fold Real Garments with One Arm: A Case Study in Cloud-Based Robotics Research
Ryan Hoque
K. Shivakumar
Shrey Aeron
Gabriel Deza
Aditya Ganapathi
Adrian S. Wong
Johnny Lee
Andy Zeng
Vincent Vanhoucke
Ken Goldberg
31
21
0
21 Apr 2022
PokeRRT: Poking as a Skill and Failure Recovery Tactic for Planar
  Non-Prehensile Manipulation
PokeRRT: Poking as a Skill and Failure Recovery Tactic for Planar Non-Prehensile Manipulation
Anuj Pasricha
Yi-Shiuan Tung
Bradley Hayes
A. Roncone
OnRL
15
12
0
31 Jan 2022
Follow the Gradient: Crossing the Reality Gap using Differentiable
  Physics (RealityGrad)
Follow the Gradient: Crossing the Reality Gap using Differentiable Physics (RealityGrad)
J. Collins
Ross Brown
Jurgen Leitner
David Howard
AI4CE
32
4
0
10 Sep 2021
Traversing the Reality Gap via Simulator Tuning
Traversing the Reality Gap via Simulator Tuning
J. Collins
Ross Brown
Jurgen Leitner
David Howard
36
14
0
03 Mar 2020
Neural Logic Reinforcement Learning
Neural Logic Reinforcement Learning
Zhengyao Jiang
Shan Luo
NAI
27
71
0
24 Apr 2019
Transferring End-to-End Visuomotor Control from Simulation to Real World
  for a Multi-Stage Task
Transferring End-to-End Visuomotor Control from Simulation to Real World for a Multi-Stage Task
Stephen James
Andrew J. Davison
Edward Johns
162
275
0
07 Jul 2017
Modular Deep Q Networks for Sim-to-real Transfer of Visuo-motor Policies
Modular Deep Q Networks for Sim-to-real Transfer of Visuo-motor Policies
Fangyi Zhang
Jurgen Leitner
Michael Milford
Peter Corke
34
39
0
21 Oct 2016
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