DiffuTraj: A Stochastic Vessel Trajectory Prediction Approach via Guided Diffusion Process
Maritime vessel maneuvers, characterized by their inherent complexity and indeterminacy, requires vessel trajectory prediction system capable of modeling the multi-modality nature of future motion states. Conventional stochastic trajectory prediction methods utilize latent variables to represent the...
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Zusammenfassung: | Maritime vessel maneuvers, characterized by their inherent complexity and
indeterminacy, requires vessel trajectory prediction system capable of modeling
the multi-modality nature of future motion states. Conventional stochastic
trajectory prediction methods utilize latent variables to represent the
multi-modality of vessel motion, however, tends to overlook the complexity and
dynamics inherent in maritime behavior. In contrast, we explicitly simulate the
transition of vessel motion from uncertainty towards a state of certainty,
effectively handling future indeterminacy in dynamic scenes. In this paper, we
present a novel framework (\textit{DiffuTraj}) to conceptualize the trajectory
prediction task as a guided reverse process of motion pattern uncertainty
diffusion, in which we progressively remove uncertainty from maritime regions
to delineate the intended trajectory. Specifically, we encode the previous
states of the target vessel, vessel-vessel interactions, and the environment
context as guiding factors for trajectory generation. Subsequently, we devise a
transformer-based conditional denoiser to capture spatio-temporal dependencies,
enabling the generation of trajectories better aligned for particular maritime
environment. Comprehensive experiments on vessel trajectory prediction
benchmarks demonstrate the superiority of our method. |
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DOI: | 10.48550/arxiv.2410.09550 |