Forecasting vessel locations is of major importance in the maritime domain, with applications in safety, logistics, etc. Nowadays, vessel tracking has become possible largely due to the increased GPS-based data availability. This paper introduces a novel Vessel Location Forecasting (VLF) framework, based on Long-Short Term Memory (LSTM) Neural Networks, aiming to perform effective location forecasting in time horizons up to 60 minutes, even for vessels not recorded in the past. The proposed VLF framework is specially designed for handling vessel data by addressing some major GPS-related obstacles including variable sampling rate, sparse trajectories, and noise contained in such data. Our framework also learns by incorporating a novel trajec...
The objective of this research is to develop a method for predicting the future behavior of ships an...
Vessel Traffic Management Systems (VTMS) and Vessel Traffic Monitoring Information Systems (VTMIS) h...
The contemporary trend shows a shift from rule-based algorithms to deep learning. In the last few ye...
Automatic Identification System (AIS) is initially developed for tracking ships to avoid collisions....
In this paper, we address the problem of predicting vessel trajectories based on Automatic Identific...
Increasing intensity in maritime traffic pushes the requirement in better preventionoriented inciden...
Data-driven methods open up unprecedented possibilities for maritime surveillance using automatic id...
Maritime transport systems are essential to human mobility. A vital part of the maritime transport s...
Maritime activity is expected to increase, and therefore also the need for maritime surveillance and...
Approximating the positions of vessels near underwater devices, such as unmanned underwater vehicles...
Progressively huge amounts of data, tracking vessels during their voyages across the seas, are becom...
The recent emergence of futuristic ships is the result of advances in information and communication ...
The vessel monitoring data provide important information for people to understand the vessel dynamic...
In order to solve the problem of control performance degradation caused by time delay in wave compen...
This paper introduces two data-driven approaches for vessel trajectory prediction based on AIS data:...
The objective of this research is to develop a method for predicting the future behavior of ships an...
Vessel Traffic Management Systems (VTMS) and Vessel Traffic Monitoring Information Systems (VTMIS) h...
The contemporary trend shows a shift from rule-based algorithms to deep learning. In the last few ye...
Automatic Identification System (AIS) is initially developed for tracking ships to avoid collisions....
In this paper, we address the problem of predicting vessel trajectories based on Automatic Identific...
Increasing intensity in maritime traffic pushes the requirement in better preventionoriented inciden...
Data-driven methods open up unprecedented possibilities for maritime surveillance using automatic id...
Maritime transport systems are essential to human mobility. A vital part of the maritime transport s...
Maritime activity is expected to increase, and therefore also the need for maritime surveillance and...
Approximating the positions of vessels near underwater devices, such as unmanned underwater vehicles...
Progressively huge amounts of data, tracking vessels during their voyages across the seas, are becom...
The recent emergence of futuristic ships is the result of advances in information and communication ...
The vessel monitoring data provide important information for people to understand the vessel dynamic...
In order to solve the problem of control performance degradation caused by time delay in wave compen...
This paper introduces two data-driven approaches for vessel trajectory prediction based on AIS data:...
The objective of this research is to develop a method for predicting the future behavior of ships an...
Vessel Traffic Management Systems (VTMS) and Vessel Traffic Monitoring Information Systems (VTMIS) h...
The contemporary trend shows a shift from rule-based algorithms to deep learning. In the last few ye...