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  4. Classification of Maritime Vessels using Convolutional Neural Networks
 
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2020
Conference Paper
Title

Classification of Maritime Vessels using Convolutional Neural Networks

Abstract
Due to a steady increase in traffic at sea, the need for support in surveillance task is growing for coast guards and other law enforcement units all over the world. An important cornerstone is a reliable vessel classification, which can be used for detecting criminal activities like illegal, unreported and unregulated fishing or smuggling operations. As many ships are required to transmit their position by using the automatic identification system (AIS), it is possible to generate a large dataset containing information on the world wide traffic. This dataset is used for implementing deep neural networks based on residual neural networks for classifying the most common ship types based on their movement patterns and geographical features. This method is able to reach a competitive result. Further, the results show the effectiveness of residual networks in time-series classification. Due to a steady increase in traffic at sea, the need for support in surveillance task is growing for coast guards and other law enforcement units all over the world. An important cornerstone is a reliable vessel classification, which can be used for detecting criminal activities like illegal, unreported and unregulated fishing or smuggling operations. As many ships are required to transmit their position by using the automatic identification system (AIS), it is possible to generate a large dataset containing information on the world wide traffic. This dataset is used for implementing deep neural networks based on residual neural networks for classifying the most common ship types based on their movement patterns and geographical features. This method is able to reach a competitive result. Further, the results show the effectiveness of residual networks in time-series classification.
Author(s)
Anneken, Mathias  
Strenger, Moritz
Robert, Sebastian  
Beyerer, Jürgen  
Fraunhofer-Institut für Optronik, Systemtechnik und Bildauswertung IOSB  
Mainwork
Artificial Intelligence. Research Impact on Key Industries. The Upper-Rhine Artificial Intelligence Symposium, UR-AI 2020  
Conference
The Upper-Rhine Artificial Intelligence Symposium (UR-AI) 2020  
File(s)
Download (2.24 MB)
Rights
Use according to copyright law
DOI
10.24406/publica-fhg-409857
Language
English
Fraunhofer-Institut für Optronik, Systemtechnik und Bildauswertung IOSB  
Keyword(s)
  • residual neural network

  • time series classification

  • Convolutional Neural Networks

  • maritime domain

  • ship classification

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