Learning by Cheating : An End-to-End Zero Shot Framework for Autonomous Drone Navigation
This paper proposes a novel framework for autonomous drone navigation through a cluttered environment. Control policies are learnt in a low-level environment during training and are applied to a complex environment during inference. The controller learnt in the training environment is tricked into b...
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Zusammenfassung: | This paper proposes a novel framework for autonomous drone navigation through
a cluttered environment. Control policies are learnt in a low-level environment
during training and are applied to a complex environment during inference. The
controller learnt in the training environment is tricked into believing that
the robot is still in the training environment when it is actually navigating
in a more complex environment. The framework presented in this paper can be
adapted to reuse simple policies in more complex tasks. We also show that the
framework can be used as an interpretation tool for reinforcement learning
algorithms. |
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DOI: | 10.48550/arxiv.2111.06056 |