Elaborating on Learned Demonstrations with Temporal Logic Specifications
February 03, 2020 ยท Declared Dead ยท ๐ Robotics: Science and Systems
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Authors
Craig Innes, Subramanian Ramamoorthy
arXiv ID
2002.00784
Category
cs.LG: Machine Learning
Cross-listed
cs.RO,
stat.ML
Citations
30
Venue
Robotics: Science and Systems
Last Checked
3 months ago
Abstract
Most current methods for learning from demonstrations assume that those demonstrations alone are sufficient to learn the underlying task. This is often untrue, especially if extra safety specifications exist which were not present in the original demonstrations. In this paper, we allow an expert to elaborate on their original demonstration with additional specification information using linear temporal logic (LTL). Our system converts LTL specifications into a differentiable loss. This loss is then used to learn a dynamic movement primitive that satisfies the underlying specification, while remaining close to the original demonstration. Further, by leveraging adversarial training, our system learns to robustly satisfy the given LTL specification on unseen inputs, not just those seen in training. We show that our method is expressive enough to work across a variety of common movement specification patterns such as obstacle avoidance, patrolling, keeping steady, and speed limitation. In addition, we show that our system can modify a base demonstration with complex specifications by incrementally composing multiple simpler specifications. We also implement our system on a PR-2 robot to show how a demonstrator can start with an initial (sub-optimal) demonstration, then interactively improve task success by including additional specifications enforced with our differentiable LTL loss.
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