Data-Driven Trajectory Imputation for Vessel Mobility Analysis
Giannis Spiliopoulos, Alexandros Troupiotis-Kapeliaris, Kostas Patroumpas, Nikolaos Liapis, Dimitrios Skoutas, Dimitris Zissis, Nikos Bikakis

TL;DR
This paper introduces HABIT, a data-driven framework for imputing missing vessel trajectories from AIS data, which improves latency and accounts for vessel-specific motion patterns, enhancing maritime mobility analysis.
Contribution
HABIT is a novel, lightweight, configurable imputation framework that leverages historical AIS data to accurately fill gaps in vessel trajectories while considering vessel motion characteristics.
Findings
HABIT achieves comparable accuracy to baseline methods.
HABIT outperforms in terms of latency.
HABIT effectively models vessel-specific motion patterns.
Abstract
Modeling vessel activity at sea is critical for a wide range of applications, including route planning, transportation logistics, maritime safety, and environmental monitoring. Over the past two decades, the Automatic Identification System (AIS) has enabled real-time monitoring of hundreds of thousands of vessels, generating huge amounts of data daily. One major challenge in using AIS data is the presence of large gaps in vessel trajectories, often caused by coverage limitations or intentional transmission interruptions. These gaps can significantly degrade data quality, resulting in inaccurate or incomplete analysis. State-of-the-art imputation approaches have mainly been devised to tackle gaps in vehicle trajectories, even when the underlying road network is not considered. But the motion patterns of sailing vessels differ substantially, e.g., smooth turns, maneuvering near ports, or…
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Taxonomy
TopicsMaritime Navigation and Safety · Human Mobility and Location-Based Analysis · Data Management and Algorithms
