Learning robot anomaly recovery skills from multiple time-driven demonstrations

Volume: 464, Pages: 522 - 532
Published: Nov 1, 2021
Abstract
Robots are prone to making anomalies when performing manipulation tasks in unstructured environments, it is often desirable to rapidly adapt the robotic behavior to avoid environmental changes by learning from experts’ demonstrations. We propose a framework for learning robot anomaly recovery skills from time-driven demonstrations based on a Gaussian process regression with prior mean derived by Gaussian mixture regression, named as mean-prior...
Paper Details
Title
Learning robot anomaly recovery skills from multiple time-driven demonstrations
Published Date
Nov 1, 2021
Volume
464
Pages
522 - 532
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