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Accelerating Robotic Reinforcement Learning via Parameterized Action Primitives

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Despite the potential of reinforcement learning (RL) for building general-purpose robotic systems, training RL agents to solve robotics tasks still remains challenging due to the difficulty of exploration in purely continuous action spaces. Addressing this problem is an active area of research with the majority of focus on improving RL methods via better optimization or more efficient exploration. An alternate but important component to consider improving is the interface of the RL algorithm with the robot. In this work, we manually specify a library of robot action primitives (RAPS), parameterized with arguments that are learned by an RL policy. These parameterized primitives are expressive, simple to implement, enable efficient exploration and can be transferred across robots, tasks and environments. We perform a thorough empirical study across challenging tasks in three distinct domains with image input and a sparse terminal reward. We find that our simple change to the action interface substantially improves both the learning efficiency and task performance irrespective of the underlying RL algorithm, significantly outperforming prior methods which learn skills from offline expert data. Code and videos at https://mihdalal.github.io/raps/

Murtaza Dalal, Deepak Pathak, Ruslan Salakhutdinov• 2021

Related benchmarks

TaskDatasetResultRank
Peg InsertionReal-world
Success Rate51.3
25
Pick-&-PlaceReal-world
Success Rate75
15
Tool UsageReal-world tool usage
Success Rate35.1
13
Average Manipulation PerformanceReal-world
Average Success Rate50.6
9
In-Hand RotationReal-world
Success Rate38.7
9
PouringReal-world
Success Rate41.2
9
StackingReal-world
Success Rate62.4
9
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