open access publication

Article, 2024

Identification of Ships in Satellite Images

IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, ISSN 2151-1535, 1939-1404, Volume 17, Pages 6045-6054, 10.1109/jstars.2024.3368508

Contributors

Heiselberg, Peder 0000-0002-8847-634X (Corresponding author) [1] Pedersen, Hasse B 0009-0007-0998-5060 [1] Srensen, Kristian A. [1] Heiselberg, Henning 0000-0003-2229-2000 [1]

Affiliations

  1. [1] Technical University of Denmark
  2. [NORA names: DTU Technical University of Denmark; University; Denmark; Europe, EU; Nordic; OECD]

Abstract

Satellite imagery has become a fundamental part for maritime monitoring and safety. Correctly estimating a ship's identity is a vital tool. We present a method based on facial recognition for identifying ships in satellite images. A large ship dataset is constructed from Sentinel-2 multispectral images and annotated by matching to the automatic identification system. Our dataset contains 7000 unique ships, for which a total of 16000 images are acquired.The method uses a convolutional neural network to extract a feature vector from the ship images and embed it on a hypersphere. Distances between ships can then be calculated via the embedding vectors. The network is trained using a triplet loss function, such that minimum distances are achieved for identical ships and maximum distances to different ships. Comparing a ship image to a reference set of ship images yields a set of distances. Ranking the distances provides a list of the most similar ships. The method correctly identifies a ship on average 60 of the time as the first in the list. Larger ships are easier to identify than small ships, where the image resolution is a limitation.

Keywords

Automatic Identification System, Sentinel-2 multispectral images, convolutional neural network, dataset, distance, embedding, embedding vectors, facial recognition, feature vector, features, function, hypersphere, identical ships, identification, identification of ships, identification system, identifying ships, identity, image resolution, imagery, images, larger ships, limitations, list, loss function, maritime monitoring, maximum distance, method, monitoring, multispectral images, network, neural network, recognition, resolution, safety, satellite, satellite imagery, satellite images, ship, ship dataset, ship images, ship’s identity, small ships, system, time, tools, triplet, triplet loss function, unique ships, vector, vital tool

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