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DeXtreme: Transfer of Agile In-hand Manipulation from Simulation to Reality

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Recent work has demonstrated the ability of deep reinforcement learning (RL) algorithms to learn complex robotic behaviours in simulation, including in the domain of multi-fingered manipulation. However, such models can be challenging to transfer to the real world due to the gap between simulation and reality. In this paper, we present our techniques to train a) a policy that can perform robust dexterous manipulation on an anthropomorphic robot hand and b) a robust pose estimator suitable for providing reliable real-time information on the state of the object being manipulated. Our policies are trained to adapt to a wide range of conditions in simulation. Consequently, our vision-based policies significantly outperform the best vision policies in the literature on the same reorientation task and are competitive with policies that are given privileged state information via motion capture systems. Our work reaffirms the possibilities of sim-to-real transfer for dexterous manipulation in diverse kinds of hardware and simulator setups, and in our case, with the Allegro Hand and Isaac Gym GPU-based simulation. Furthermore, it opens up possibilities for researchers to achieve such results with commonly-available, affordable robot hands and cameras. Videos of the resulting policy and supplementary information, including experiments and demos, can be found at https://dextreme.org/

Ankur Handa, Arthur Allshire, Viktor Makoviychuk, Aleksei Petrenko, Ritvik Singh, Jingzhou Liu, Denys Makoviichuk, Karl Van Wyk, Alexander Zhurkevich, Balakumar Sundaralingam, Yashraj Narang, Jean-Francois Lafleche, Dieter Fox, Gavriel State• 2022

Related benchmarks

TaskDatasetResultRank
Peg InsertionReal-world
Success Rate58.2
25
Pick-&-PlaceReal-world
Success Rate80.1
15
Tool UsageReal-world tool usage
Success Rate45.3
13
In-Hand RotationReal-world
Success Rate52.6
9
Average Manipulation PerformanceReal-world
Average Success Rate59.2
9
PouringReal-world
Success Rate50.8
9
StackingReal-world
Success Rate68.4
9
Cube rotationMedium Cube 55 mm (real-world)
RPM3.08
4
Cube rotationLarge Cube 65 mm (real-world)
RPM4.83
4
In-Hand ReorientationCube
Consecutive Successes27.8
3
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