Learning constraint-based planning models from demonstrations
Author(s)
Loula, Joao; Allen, Kelsey Rebecca; Silver, Tom; Tenenbaum, Joshua B
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© 2020 IEEE. How can we learn representations for planning that are both efficient and flexible? Task and motion planning models are a good candidate, having been very successful in long-horizon planning tasks - however, they've proved challenging for learning, relying mostly on hand-coded representations. We present a framework for learning constraint-based task and motion planning models using gradient descent. Our model observes expert demonstrations of a task and decomposes them into modes - segments which specify a set of constraints on a trajectory optimization problem. We show that our model learns these modes from few demonstrations, that modes can be used to plan flexibly in different environments and to achieve different types of goals, and that the model can recombine these modes in novel ways.
Date issued
2020Department
Massachusetts Institute of Technology. Department of Brain and Cognitive Sciences; Massachusetts Institute of Technology. Department of Electrical Engineering and Computer ScienceJournal
IEEE International Conference on Intelligent Robots and Systems
Publisher
Institute of Electrical and Electronics Engineers (IEEE)
Citation
Loula, Joao, Allen, Kelsey, Silver, Tom and Tenenbaum, Josh. 2020. "Learning constraint-based planning models from demonstrations." IEEE International Conference on Intelligent Robots and Systems.
Version: Author's final manuscript