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Comparing Task Simplifications to Learn Closed-Loop Object Picking Using Deep Reinforcement Learning
2019
IEEE Robotics and Automation Letters
Enabling autonomous robots to interact in unstructured environments with dynamic objects requires manipulation capabilities that can deal with clutter, changes, and objects' variability. This paper presents a comparison of different reinforcement learning-based approaches for object picking with a robotic manipulator. We learn closed-loop policies mapping depth camera inputs to motion commands and compare different approaches to keep the problem tractable, including reward shaping, curriculum
doi:10.1109/lra.2019.2896467
fatcat:kocz5fwk2fhjtnx5ps5sofrew4