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Sampling-based Exploration for Reinforcement Learning of Dexterous Manipulation

Gagan Khandate, Siqi Shang, Eric T. Chang, Tristan L. Saidi, Johnson Adams, Matei Ciocarlie

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Abstract

In this paper, we present a novel method for achieving dexterous manipulation of complex objects, while simultaneously securing the object without the use of passive support surfaces.We posit that a key difficulty for training such policies in a Reinforcement Learning framework is the difficulty of exploring the problem state space, as the accessible regions of this space form a complex structure along manifolds of a high-dimensional space.To address this challenge, we use two versions of the non-holonomic Rapidly-Exploring Random Trees algorithm; one version is more general, but requires explicit use of the environment's transition function, while the second version uses manipulation-specific kinematic constraints to attain better sample efficiency.In both cases, we use states found via sampling-based exploration to generate reset distributions that enable training control policies under full dynamic constraints via model-free Reinforcement Learning.We show that these policies are effective at manipulation problems of higher difficulty than previously shown, and also transfer effectively to real robots.

Topics & Concepts

Reinforcement learningComputer scienceSampling (signal processing)Artificial intelligenceReinforcementHuman–computer interactionMachine learningComputer visionEngineeringStructural engineeringFilter (signal processing)Robot Manipulation and Learning