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Context-Enriched Natural Language Descriptions of Vessel Trajectories

arXiv cs.AI / 3/16/2026

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Key Points

  • The paper proposes a context-aware trajectory abstraction framework to convert raw AIS vessel trajectory data into structured, semantically enriched representations for both humans and machine reasoning systems.
  • It segments noisy AIS sequences into distinct trips consisting of clean, mobility-annotated episodes and enriches each episode with multi-source contextual information such as nearby geographic entities, offshore navigation features, and weather conditions.
  • The enriched representations enable generation of controlled natural language descriptions using large language models (LLMs) and support higher-level maritime reasoning tasks.
  • The authors empirically evaluate description quality across several LLMs and open contextual features, showing how semantic density reduction aids downstream analytics and LLM integration.

Abstract

We address the problem of transforming raw vessel trajectory data collected from AIS into structured and semantically enriched representations interpretable by humans and directly usable by machine reasoning systems. We propose a context-aware trajectory abstraction framework that segments noisy AIS sequences into distinct trips each consisting of clean, mobility-annotated episodes. Each episode is further enriched with multi-source contextual information, such as nearby geographic entities, offshore navigation features, and weather conditions. Crucially, such representations can support generation of controlled natural language descriptions using LLMs. We empirically examine the quality of such descriptions generated using several LLMs over AIS data along with open contextual features. By increasing semantic density and reducing spatiotemporal complexity, this abstraction can facilitate downstream analytics and enable integration with LLMs for higher-level maritime reasoning tasks.