CVAIIVMay 11, 2020

Optimizing Vessel Trajectory Compression

arXiv:2005.05418v1
AI Analysis

This work addresses incremental improvements in trajectory compression for maritime monitoring applications.

The paper tackles the problem of fine-tuning parameters for vessel trajectory compression to improve synopses, achieving comparable or better compression efficiency than default settings without manual inspection.

In previous work we introduced a trajectory detection module that can provide summarized representations of vessel trajectories by consuming AIS positional messages online. This methodology can provide reliable trajectory synopses with little deviations from the original course by discarding at least 70% of the raw data as redundant. However, such trajectory compression is very sensitive to parametrization. In this paper, our goal is to fine-tune the selection of these parameter values. We take into account the type of each vessel in order to provide a suitable configuration that can yield improved trajectory synopses, both in terms of approximation error and compression ratio. Furthermore, we employ a genetic algorithm converging to a suitable configuration per vessel type. Our tests against a publicly available AIS dataset have shown that compression efficiency is comparable or even better than the one with default parametrization without resorting to a laborious data inspection.

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