Graph neural networks have emerged as a powerful tool for learning spatiotemporal interactions. However, conventional approaches often rely on predefined graphs, which may obscure the precise relationships being modeled. Additionally, existing methods typically define nodes based on fixed spatial locations, a strategy that is ill-suited for dynamic environments like maritime environments. Our method introduces an innovative graph representation where timestamps are modeled as distinct nodes, allowing temporal dependencies to be explicitly captured through graph edges. This setup is extended to construct a multi-ship graph that effectively captures spatial interactions while preserving graph sparsity. The graph is processed using Graph Convolutional Network layers to capture spatiotemporal patterns, with a forecasting layer for feature prediction and a Variational Graph Autoencoder for reconstruction, enabling robust anomaly detection.
@article{arxiv.2502.14197,
title = {Adaptive Sparsified Graph Learning Framework for Vessel Behavior Anomalies},
author = {Jeehong Kim and Minchan Kim and Jaeseong Ju and Youngseok Hwang and Wonhee Lee and Hyunwoo Park},
journal= {arXiv preprint arXiv:2502.14197},
year = {2025}
}
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Anomaly Detection in Scientific Domains AAAI Workshop