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Near-Shore Mapping for Detection and Tracking of Vessels

Abstract

For an autonomous surface vessel (ASV) to dock, it must track other vessels close to the docking area. Kayaks present a particular challenge due to their proximity to the dock and relatively small size. Maritime target tracking has typically employed land masking to filter out land and the dock. However, imprecise land masking makes it difficult to track close-to-dock objects. Our approach uses Light Detection And Ranging (LiDAR) data and maps the docking area before tracking. The precise 3D measurements allow for precise map creation. However, the mapping could result in static, yet potentially moving, objects being mapped. We detect and filter out potentially moving objects from the LiDAR data by utilizing image data. The visual vessel detection and segmentation method is a neural network that is trained on our labeled data. Close-to-shore tracking improves with an accurate map and is demonstrated on a recently gathered real-world dataset. The dataset contains multiple sequences of a kayak and a day cruiser moving close to the dock, in a collision path with an autonomous ferry prototype.
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Category

Academic chapter

Language

English

Author(s)

  • Nicholas Dalhaug
  • Annette Stahl
  • Rudolf Mester
  • Edmund Førland Brekke

Affiliation

  • SINTEF Ocean / Aquaculture
  • Norwegian University of Science and Technology

Date

26.08.2025

Year

2025

Publisher

IEEE (Institute of Electrical and Electronics Engineers)

Book

International conference on Information Fusion 2025

View this publication at Norwegian Research Information Repository