SECURE: Semantics-aware Embodied Conversation under Unawareness for Lifelong Robot Learning
Rimvydas Rubavicius, Peter David Fagan, Alex Lascarides, Subramanian Ramamoorthy

TL;DR
SECURE is a novel robot learning approach that uses semantic analysis and embodied conversation to learn new concepts during task execution, improving adaptability and data efficiency in unfamiliar environments.
Contribution
The paper introduces SECURE, a new interactive policy enabling robots to learn previously unknown concepts through dialogue during task execution.
Findings
SECURE outperforms non-dialogue agents in data efficiency.
It effectively learns new concepts during deployment.
Demonstrated success in both simulated and real-world environments.
Abstract
This paper addresses a challenging interactive task learning scenario we call rearrangement under unawareness: an agent must manipulate a rigid-body environment without knowing a key concept necessary for solving the task and must learn about it during deployment. For example, the user may ask to "put the two granny smith apples inside the basket", but the agent cannot correctly identify which objects in the environment are "granny smith" as the agent has not been exposed to such a concept before. We introduce SECURE, an interactive task learning policy designed to tackle such scenarios. The unique feature of SECURE is its ability to enable agents to engage in semantic analysis when processing embodied conversations and making decisions. Through embodied conversation, a SECURE agent adjusts its deficient domain model by engaging in dialogue to identify and learn about previously…
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Taxonomy
TopicsRobotics and Automated Systems
