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  4. TR2MTL: LLM based framework for Metric Temporal Logic Formalization of Traffic Rules
 
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June 2024
Conference Paper
Title

TR2MTL: LLM based framework for Metric Temporal Logic Formalization of Traffic Rules

Abstract
Traffic rules formalization is crucial for verifying the compliance and safety of autonomous vehicles (AVs). However, manual translation of natural language traffic rules as formal specification requires domain knowledge and logic expertise, which limits its adaptation. This paper introduces TR2MTL, a framework that employs large language models (LLMs) to automatically translate traffic rules (TR) into metric temporal logic (MTL). It is envisioned as a human-in-loop system for AV rule formalization. It utilizes a chain-of-thought in-context learning approach to guide the LLM in step-by-step translation and generating valid and grammatically correct MTL formulas. It can be extended to various forms of temporal logic and rules. We evaluated the framework on a challenging dataset of traffic rules we created from various sources and compared it against LLMs using different in-context learning methods. Results show that TR2MTL is domain-agnostic, achieving high accuracy and generalization capability even with a small dataset. Moreover, the method effectively predicts formulas with varying degrees of logical and semantic structure in unstructured traffic rules.
Author(s)
Manas, Kumar
Zwicklbauer, Stefan
Paschke, Adrian  
Freie Universität Berlin  
Mainwork
35th IEEE Intelligent Vehicles Symposium, IV 2024  
Conference
Intelligent Vehicles Symposium 2024  
Open Access
DOI
10.1109/IV55156.2024.10588650
Language
English
Fraunhofer-Institut für Offene Kommunikationssysteme FOKUS  
Keyword(s)
  • Measurement

  • Learning systems

  • Large language models

  • Semantics

  • Natural languages

  • Manuals

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