CVAIMar 27, 2025

A Multi-Modal Knowledge-Enhanced Framework for Vessel Trajectory Prediction

arXiv:2503.21834v14 citationsh-index: 21SSTD
Originality Incremental advance
AI Analysis

This work solves trajectory prediction for maritime navigation, offering incremental improvements in accuracy.

The paper tackled vessel trajectory prediction by addressing irregular sampling intervals and complex movement patterns, resulting in a 12.08%-17.86% accuracy improvement over state-of-the-art methods.

Accurate vessel trajectory prediction facilitates improved navigational safety, routing, and environmental protection. However, existing prediction methods are challenged by the irregular sampling time intervals of the vessel tracking data from the global AIS system and the complexity of vessel movement. These aspects render model learning and generalization difficult. To address these challenges and improve vessel trajectory prediction, we propose the multi-modal knowledge-enhanced framework (MAKER) for vessel trajectory prediction. To contend better with the irregular sampling time intervals, MAKER features a Large language model-guided Knowledge Transfer (LKT) module that leverages pre-trained language models to transfer trajectory-specific contextual knowledge effectively. To enhance the ability to learn complex trajectory patterns, MAKER incorporates a Knowledge-based Self-paced Learning (KSL) module. This module employs kinematic knowledge to progressively integrate complex patterns during training, allowing for adaptive learning and enhanced generalization. Experimental results on two vessel trajectory datasets show that MAKER can improve the prediction accuracy of state-of-the-art methods by 12.08%-17.86%.

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