2021
DOI: 10.48550/arxiv.2109.15233
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Solving the Real Robot Challenge using Deep Reinforcement Learning

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“…The pinching policy performed best on the real robot, and is capable of carrying the cube along goal trajectories for extended periods of time, and of recovering the cube when it is dropped. This policy was submitted for the official RRC Phase 1 final evaluation round and obtained the winning score 31 (see https://real-robot-challenge.com/leaderboard, username 'thriftysnipe').…”
Section: Pushingmentioning
confidence: 99%
“…The pinching policy performed best on the real robot, and is capable of carrying the cube along goal trajectories for extended periods of time, and of recovering the cube when it is dropped. This policy was submitted for the official RRC Phase 1 final evaluation round and obtained the winning score 31 (see https://real-robot-challenge.com/leaderboard, username 'thriftysnipe').…”
Section: Pushingmentioning
confidence: 99%