2016 IEEE 16th International Conference on Data Mining Workshops (ICDMW) 2016
DOI: 10.1109/icdmw.2016.0058
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Mining Vessel Tracking Data for Maritime Domain Applications

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Cited by 17 publications
(11 citation statements)
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“…Another significant portion of Set 1' focuses on technical aspects of maritime surveillance, illustrating the constant progress of maritime surveillance systems and the potential for improvement in terms of equipment [55][56][57], data acquisition and fusion [56,58,59], preprocessing and exploitation [60][61][62]. A large share of these papers focusses on event and activity recognition based on trajectory analysis [63,64], sometimes relying on artificial intelligence (deep-learning, data mining) [65,66]. A minor but non-negligible share of papers focuses on uses of maritime surveillance data to serve environmental objectives, either in realtime to ensure compliance with environmental regulations and detect offenders [67][68][69], or in delayed-time to assess impacts on ecosystems and marine and atmospheric pollutions [46,70,71].…”
Section: Discussionmentioning
confidence: 99%
“…Another significant portion of Set 1' focuses on technical aspects of maritime surveillance, illustrating the constant progress of maritime surveillance systems and the potential for improvement in terms of equipment [55][56][57], data acquisition and fusion [56,58,59], preprocessing and exploitation [60][61][62]. A large share of these papers focusses on event and activity recognition based on trajectory analysis [63,64], sometimes relying on artificial intelligence (deep-learning, data mining) [65,66]. A minor but non-negligible share of papers focuses on uses of maritime surveillance data to serve environmental objectives, either in realtime to ensure compliance with environmental regulations and detect offenders [67][68][69], or in delayed-time to assess impacts on ecosystems and marine and atmospheric pollutions [46,70,71].…”
Section: Discussionmentioning
confidence: 99%
“…The proposed algorithm can be used by decision makers at different stages of maritime awareness and port security evaluation. The authors in Alessandrini et al (2016) demonstrate how different methodologies, such as data mining, information fusion and visual analytics, enable the automatic detection of structured anomalies, understanding of activities at sea and the analysis of their trends over time. This kind of knowledge can provide new possibilities for improving the safety of navigation.…”
Section: Related Workmentioning
confidence: 99%
“…On the other hand, [1] shows how Big Data can be used to gain a better understanding of maritime activities, which is especially useful in remote areas such as the Arctic where shipping activity needs to be monitored to ensure sustainability and the information is otherwise difficult to access. It also discusses anomaly detection, such as detecting when a vessel deviates from the declared path, falsifies its AIS reports or turns off its AIS transponder to potentially engage in illegal activities.…”
Section: Safety Improvement / Unapređenje Sigurnostimentioning
confidence: 99%
“…The last received AIS message is represented by the blue star and the destination port is represented by the green star. Accurate prediction of routes can be used to better estimate times of arrival in ports [1].…”
Section: Logistics Optimization / Optimizacija Logistikementioning
confidence: 99%