SemTra: A Semantic Skill Translator for Cross-Domain Zero-Shot Policy Adaptation

Authors

  • Sangwoo Shin Department of Computer Science and Engineering Sungkyunkwan University
  • Minjong Yoo Department of Computer Science and Engineering Sungkyunkwan University
  • Jeongwoo Lee Department of Computer Science and Engineering Sungkyunkwan University
  • Honguk Woo Department of Computer Science and Engineering Sungkyunkwan University

DOI:

https://doi.org/10.1609/aaai.v38i13.29421

Keywords:

ML: Reinforcement Learning, ML: Applications, ML: Imitation Learning & Inverse Reinforcement Learning

Abstract

This work explores the zero-shot adaptation capability of semantic skills, semantically interpretable experts' behavior patterns, in cross-domain settings, where a user input in interleaved multi-modal snippets can prompt a new long-horizon task for different domains. In these cross-domain settings, we present a semantic skill translator framework SemTra which utilizes a set of multi-modal models to extract skills from the snippets, and leverages the reasoning capabilities of a pretrained language model to adapt these extracted skills to the target domain. The framework employs a two-level hierarchy for adaptation: task adaptation and skill adaptation. During task adaptation, seq-to-seq translation by the language model transforms the extracted skills into a semantic skill sequence, which is tailored to fit the cross-domain contexts. Skill adaptation focuses on optimizing each semantic skill for the target domain context, through parametric instantiations that are facilitated by language prompting and contrastive learning-based context inferences. This hierarchical adaptation empowers the framework to not only infer a complex task specification in one-shot from the interleaved multi-modal snippets, but also adapt it to new domains with zero-shot learning abilities. We evaluate our framework with Meta-World, Franka Kitchen, RLBench, and CARLA environments. The results clarify the framework's superiority in performing long-horizon tasks and adapting to different domains, showing its broad applicability in practical use cases, such as cognitive robots interpreting abstract instructions and autonomous vehicles operating under varied configurations.

Published

2024-03-24

How to Cite

Shin, S., Yoo, M., Lee, J., & Woo, H. (2024). SemTra: A Semantic Skill Translator for Cross-Domain Zero-Shot Policy Adaptation. Proceedings of the AAAI Conference on Artificial Intelligence, 38(13), 15000-15008. https://doi.org/10.1609/aaai.v38i13.29421

Issue

Section

AAAI Technical Track on Machine Learning IV