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Autori principali: Liu, Jason Xinyu, Shah, Ankit, Rosen, Eric, Jia, Mingxi, Konidaris, George, Tellex, Stefanie
Natura: Preprint
Pubblicazione: 2022
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Accesso online:https://arxiv.org/abs/2206.05096
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author Liu, Jason Xinyu
Shah, Ankit
Rosen, Eric
Jia, Mingxi
Konidaris, George
Tellex, Stefanie
author_facet Liu, Jason Xinyu
Shah, Ankit
Rosen, Eric
Jia, Mingxi
Konidaris, George
Tellex, Stefanie
contents Deploying robots in real-world environments, such as households and manufacturing lines, requires generalization across novel task specifications without violating safety constraints. Linear temporal logic (LTL) is a widely used task specification language with a compositional grammar that naturally induces commonalities among tasks while preserving safety guarantees. However, most prior work on reinforcement learning with LTL specifications treats every new task independently, thus requiring large amounts of training data to generalize. We propose LTL-Transfer, a zero-shot transfer algorithm that composes task-agnostic skills learned during training to safely satisfy a wide variety of novel LTL task specifications. Experiments in Minecraft-inspired domains show that after training on only 50 tasks, LTL-Transfer can solve over 90% of 100 challenging unseen tasks and 100% of 300 commonly used novel tasks without violating any safety constraints. We deployed LTL-Transfer at the task-planning level of a quadruped mobile manipulator to demonstrate its zero-shot transfer ability for fetch-and-deliver and navigation tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2206_05096
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle LTL-Transfer: Skill Transfer for Temporal Task Specification
Liu, Jason Xinyu
Shah, Ankit
Rosen, Eric
Jia, Mingxi
Konidaris, George
Tellex, Stefanie
Robotics
Deploying robots in real-world environments, such as households and manufacturing lines, requires generalization across novel task specifications without violating safety constraints. Linear temporal logic (LTL) is a widely used task specification language with a compositional grammar that naturally induces commonalities among tasks while preserving safety guarantees. However, most prior work on reinforcement learning with LTL specifications treats every new task independently, thus requiring large amounts of training data to generalize. We propose LTL-Transfer, a zero-shot transfer algorithm that composes task-agnostic skills learned during training to safely satisfy a wide variety of novel LTL task specifications. Experiments in Minecraft-inspired domains show that after training on only 50 tasks, LTL-Transfer can solve over 90% of 100 challenging unseen tasks and 100% of 300 commonly used novel tasks without violating any safety constraints. We deployed LTL-Transfer at the task-planning level of a quadruped mobile manipulator to demonstrate its zero-shot transfer ability for fetch-and-deliver and navigation tasks.
title LTL-Transfer: Skill Transfer for Temporal Task Specification
topic Robotics
url https://arxiv.org/abs/2206.05096