4.7 Article

Classification-Aided SAR and AIS Data Fusion for Space-Based Maritime Surveillance

期刊

REMOTE SENSING
卷 13, 期 1, 页码 -

出版社

MDPI
DOI: 10.3390/rs13010104

关键词

synthetic aperture radar (SAR); Sentinel-1; ICEYE-X2; automatic identification system (AIS); data fusion; data association; ship classification; ship detection; maritime surveillance

资金

  1. Surrey Satellite Technology Limited (SSTL)

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The paper proposes a classification-aided data association technique using transfer learning to classify ship types in SAR imagery, aiming to improve accurate data association between SAR ship detections and AIS observations in dense shipping environments.
A wide range of research activities exploit spaceborne Synthetic Aperture Radar (SAR) and Automatic Identification System (AIS) for applications that contribute to maritime safety and security. An important requirement of SAR and AIS data fusion is accurate data association (or correlation), which is the process of linking SAR ship detections and AIS observations considered to be of a common origin. The data association is particularly difficult in dense shipping environments, where ships detected in SAR imagery can be wrongly associated with AIS observations. This often results in an erroneous and/or inaccurate maritime picture. Therefore, a classification-aided data association technique is proposed which uses a transfer learning method to classify ship types in SAR imagery. Specifically, a ship classification model is first trained on AIS data and then transferred to make predictions on SAR ship detections. These predictions are subsequently used in the data association which uses a rank-ordered assignment technique to provide a robust match between the data. Two case studies in the UK are used to evaluate the performance of the classification-aided data association technique based on the types of SAR product used for maritime surveillance: wide-area and large-scale data association in the English Channel and focused data association in the Solent. Results show a high level of correspondence between the data that is robust to dense shipping or high traffic, and the confidence in the data association is improved when using class (i.e., ship type) information.

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