2023
DOI: 10.3390/robotics12040119
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MURM: Utilization of Multi-Views for Goal-Conditioned Reinforcement Learning in Robotic Manipulation

Seongwon Jang,
Hyemi Jeong,
Hyunseok Yang

Abstract: We present a novel framework, multi-view unified reinforcement learning for robotic manipulation (MURM), which efficiently utilizes multiple camera views to train a goal-conditioned policy for a robot to perform complex tasks. The MURM framework consists of three main phases: (i) demo collection from an expert, (ii) representation learning, and (iii) offline reinforcement learning. In the demo collection phase, we design a scripted expert policy that uses privileged information, such as Cartesian coordinates o… Show more

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