SafeMimic: Towards Safe and Autonomous Human-to-Robot Imitation for Mobile Manipulation
Arpit Bahety, Arnav Balaji, Ben Abbatematteo, Roberto Mart\'in-Mart\'in

TL;DR
SafeMimic enables robots to learn complex mobile manipulation tasks safely and autonomously from a single human video demonstration by translating, adapting, and verifying actions in a safe manner.
Contribution
This work introduces SafeMimic, a novel framework for safe, autonomous learning of mobile manipulation skills from a single third-person video demonstration.
Findings
Successfully learned multi-step tasks from single demonstrations
Achieved safety verification before executing actions
Outperformed state-of-the-art baselines across seven tasks
Abstract
For robots to become efficient helpers in the home, they must learn to perform new mobile manipulation tasks simply by watching humans perform them. Learning from a single video demonstration from a human is challenging as the robot needs to first extract from the demo what needs to be done and how, translate the strategy from a third to a first-person perspective, and then adapt it to be successful with its own morphology. Furthermore, to mitigate the dependency on costly human monitoring, this learning process should be performed in a safe and autonomous manner. We present SafeMimic, a framework to learn new mobile manipulation skills safely and autonomously from a single third-person human video. Given an initial human video demonstration of a multi-step mobile manipulation task, SafeMimic first parses the video into segments, inferring both the semantic changes caused and the…
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Taxonomy
TopicsRobot Manipulation and Learning · Social Robot Interaction and HRI · Reinforcement Learning in Robotics
