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arxiv:2601.18537

SKETCH: Semantic Key-Point Conditioning for Long-Horizon Vessel Trajectory Prediction

Published on Jan 26
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Abstract

A semantic-key-point-conditioned framework improves long-horizon vessel trajectory prediction by combining global semantic decision-making with local motion modeling, outperforming existing methods on real-world AIS data.

AI-generated summary

Accurate long-horizon vessel trajectory prediction remains challenging due to compounded uncertainty from complex navigation behaviors and environmental factors. Existing methods often struggle to maintain global directional consistency, leading to drifting or implausible trajectories when extrapolated over long time horizons. To address this issue, we propose a semantic-key-point-conditioned trajectory modeling framework, in which future trajectories are predicted by conditioning on a high-level Next Key Point (NKP) that captures navigational intent. This formulation decomposes long-horizon prediction into global semantic decision-making and local motion modeling, effectively restricting the support of future trajectories to semantically feasible subsets. To efficiently estimate the NKP prior from historical observations, we adopt a pretrain-finetune strategy. Extensive experiments on real-world AIS data demonstrate that the proposed method consistently outperforms state-of-the-art approaches, particularly for long travel durations, directional accuracy, and fine-grained trajectory prediction.

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