We present a novel method for segmenting demonstrations, recognizing repeated skills, and generalizing complex tasks from unstructured demonstrations. This method combines many of the advantages of recent automatic segmentation methods for learning from demonstration into a single principled, integrated framework. Specifically, we use the Beta Process Autoregressive Hidden Markov Model and Dynamic Movement Primitives to learn and generalize a multi-step task on the PR2 mobile manipulator and to demonstrate the potential of our framework to learn a large library of skills over time.
Jingyun YangRuoyu ZhangConnor SettleAkshara RaiRika AntonovaJeannette Bohg
Huiwen ZhangYuwang LiuWeijia Zhou
Scott NiekumSarah OsentoskiGeorge KonidarisSachin ChittaBhaskara MarthiAndrew G. Barto