
arXiv: 2011.11338
handle: 11588/884541 , 11568/1143968 , 2158/1311921
Maritime surveillance (MS) is of paramount importance for search and rescue operations, fishery monitoring, pollution control, law enforcement, migration monitoring, and national security policies. Since ground-based radars and automatic identification system (AIS) do not always provide a comprehensive and seamless coverage of the entire maritime domain, the use of space-based sensors is crucial to complement them. We reviewed space-based technologies for MS in the first part of this work, titled "Space-based Global Maritime Surveillance. Part I: Satellite Technologies" [1]. However, future MS systems combining multiple terrestrial and space-based sensors with additional information sources will require dedicated artificial intelligence and data fusion techniques for the processing of raw satellite images and fuse heterogeneous information. The second part of our work focuses on the most promising artificial intelligence and data fusion techniques for MS using space-based sensors.
This paper has been submitted to IEEE Aerospace and Electronic Systems Magazine
Signal Processing (eess.SP), FOS: Electrical engineering, electronic engineering, information engineering, Artificial intelligence, Automatic identification system, Data fusion, Heterogeneous information, Information sources, Maritime surveillance, Satellite technology, Search and rescue operations, Space-based sensors, Electrical Engineering and Systems Science - Signal Processing
Signal Processing (eess.SP), FOS: Electrical engineering, electronic engineering, information engineering, Artificial intelligence, Automatic identification system, Data fusion, Heterogeneous information, Information sources, Maritime surveillance, Satellite technology, Search and rescue operations, Space-based sensors, Electrical Engineering and Systems Science - Signal Processing
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