2020
DOI: 10.48550/arxiv.2011.00778
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Learning Sequences of Manipulation Primitives for Robotic Assembly

Abstract: This paper explores the idea that skillful assembly is best represented as dynamic sequences of Manipulation Primitives, and that such sequences can be automatically discovered by Reinforcement Learning. Manipulation Primitives, such as "Move down until contact", "Slide along x while maintaining contact with the surface", have enough complexity to keep the search tree shallow, yet are generic enough to generalize across a wide range of assembly tasks. Policies are learned in simulation, and then transferred on… Show more

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Cited by 1 publication
(6 citation statements)
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“…These values are sightly higher than the simulation and we hypothesize that the extra compliance offered by the impedance control helps the insertion process. Comparing with the continuous control baseline, two primitivebased methods (ours and discrete primitives) are more robust to sim-to-real transfer because using primitives as action improves the generalizability, which is also suggested in [11]. Moreover, benefiting from learning continuous primitive parameters, the primitives obtained by our proposed method are more efficient and have significantly higher success rates than using discrete primitives.…”
Section: Real Robot Experiments 1) Real Robot Setupmentioning
confidence: 86%
See 4 more Smart Citations
“…These values are sightly higher than the simulation and we hypothesize that the extra compliance offered by the impedance control helps the insertion process. Comparing with the continuous control baseline, two primitivebased methods (ours and discrete primitives) are more robust to sim-to-real transfer because using primitives as action improves the generalizability, which is also suggested in [11]. Moreover, benefiting from learning continuous primitive parameters, the primitives obtained by our proposed method are more efficient and have significantly higher success rates than using discrete primitives.…”
Section: Real Robot Experiments 1) Real Robot Setupmentioning
confidence: 86%
“…Similar to [11], we define one insertion primitive as the robot end-effector's desired motion, which consists of the desired movement command and a stopping condition as parameters. However, in their method, they proposed to use a set of discrete primitives parameters for each primitive and treat primitives as discrete actions.…”
Section: Proposed Approach a Parameterized Insertion Primitivesmentioning
confidence: 99%
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