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Main Authors: Zhang, Rui, Wu, Hanyue, Yin, Zhenzhong, Xiao, Zhu, Xiong, Yong, Liu, Kezhong
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2403.08838
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author Zhang, Rui
Wu, Hanyue
Yin, Zhenzhong
Xiao, Zhu
Xiong, Yong
Liu, Kezhong
author_facet Zhang, Rui
Wu, Hanyue
Yin, Zhenzhong
Xiao, Zhu
Xiong, Yong
Liu, Kezhong
contents Vessel trajectory clustering, which aims to find similar trajectory patterns, has been widely leveraged in overwater applications. Most traditional methods use predefined rules and thresholds to identify discrete vessel behaviors. They aim for high-quality clustering and conduct clustering on entire sequences, whether the original trajectory or its sub-trajectories, failing to represent their evolution. To resolve this problem, we propose a Predictive Clustering of Hierarchical Vessel Behavior (PC-HiV). PC-HiV first uses hierarchical representations to transform every trajectory into a behavioral sequence. Then, it predicts evolution at each timestamp of the sequence based on the representations. By applying predictive clustering and latent encoding, PC-HiV improves clustering and predictions simultaneously. Experiments on real AIS datasets demonstrate PC-HiV's superiority over existing methods, showcasing its effectiveness in capturing behavioral evolution discrepancies between vessel types (tramp vs. liner) and within emission control areas. Results show that our method outperforms NN-Kmeans and Robust DAA by 3.9% and 6.4% of the purity score.
format Preprint
id arxiv_https___arxiv_org_abs_2403_08838
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Predictive Clustering of Vessel Behavior Based on Hierarchical Trajectory Representation
Zhang, Rui
Wu, Hanyue
Yin, Zhenzhong
Xiao, Zhu
Xiong, Yong
Liu, Kezhong
Machine Learning
Artificial Intelligence
Vessel trajectory clustering, which aims to find similar trajectory patterns, has been widely leveraged in overwater applications. Most traditional methods use predefined rules and thresholds to identify discrete vessel behaviors. They aim for high-quality clustering and conduct clustering on entire sequences, whether the original trajectory or its sub-trajectories, failing to represent their evolution. To resolve this problem, we propose a Predictive Clustering of Hierarchical Vessel Behavior (PC-HiV). PC-HiV first uses hierarchical representations to transform every trajectory into a behavioral sequence. Then, it predicts evolution at each timestamp of the sequence based on the representations. By applying predictive clustering and latent encoding, PC-HiV improves clustering and predictions simultaneously. Experiments on real AIS datasets demonstrate PC-HiV's superiority over existing methods, showcasing its effectiveness in capturing behavioral evolution discrepancies between vessel types (tramp vs. liner) and within emission control areas. Results show that our method outperforms NN-Kmeans and Robust DAA by 3.9% and 6.4% of the purity score.
title Predictive Clustering of Vessel Behavior Based on Hierarchical Trajectory Representation
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2403.08838