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Bayesian information fusion and multitarget tracking for maritime situational awareness

Authors :
Alfonso Farina
Paolo Braca
Florian Meyer
Giovanni Soldi
Domenico Gaglione
Franz Hlawatsch
Moe Z. Win
Source :
Other repository
Publication Year :
2020
Publisher :
Institution of Engineering and Technology (IET), 2020.

Abstract

© The Institution of Engineering and Technology 2020. The goal of maritime situational awareness (MSA) is to provide a seamless wide-area operational picture of ship traffic in coastal areas and the oceans in real time. Radar is a central sensing modality for MSA. In particular, oceanographic high-frequency surface-wave (HFSW) radars are attractive for surveying large sea areas at over-the-horizon distances, due to their low environmental footprint and low power requirements. However, their design is not optimal for the challenging conditions prevalent in MSA applications, thus calling for the development of dedicated information fusion and multisensor-multitarget tracking algorithms. In this study, the authors show how the multisensor-multitarget tracking problem can be formulated in a Bayesian framework and efficiently solved by running the loopy sum-product algorithm on a suitably devised factor graph. Compared to previously proposed methods, this approach is advantageous in terms of estimation accuracy, computational complexity, implementation flexibility, and scalability. Moreover, its performance can be further enhanced by estimating unknown model parameters in an online fashion and by fusing automatic identification system (AIS) data and context-based information. The effectiveness of the proposed Bayesian multisensor-multitarget tracking and information fusion algorithms is demonstrated through experimental results based on simulated data as well as real HFSW radar data and real AIS data.

Details

ISSN :
17518792 and 17518784
Volume :
14
Database :
OpenAIRE
Journal :
IET Radar, Sonar & Navigation
Accession number :
edsair.doi.dedup.....34b4b76783cb3f93376a04d1e7de5e7b