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An Efficient Ship Detection Method Based on YOLO and Ship Wakes Using High-Resolution Optical Jilin1 Satellite Imagery. | LitMetric

An Efficient Ship Detection Method Based on YOLO and Ship Wakes Using High-Resolution Optical Jilin1 Satellite Imagery.

Sensors (Basel)

Key Laboratory of Target Cognition and Application Technology, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190, China.

Published: October 2024

AI Article Synopsis

  • The study presents a new scheme for detecting ships in remote sensing images, integrating deep learning for ship body detection and feature-based processing for wake detection.
  • By modeling the sea region and analyzing image quality, the method effectively identifies ships even if they are obscured by clouds or outside the image boundaries, resulting in a low rate of false alarms.
  • The proposed approach has demonstrated high success rates, detecting over 93.5% of visible ships and more than 70% of targets without visible ship bodies in real datasets, highlighting its practical application in remote sensing.

Article Abstract

In this study, we propose a practical and efficient scheme for ship detection in remote sensing imagery. Our method is developed using both ship body detection and ship wake detection and combines deep learning and feature-based image processing. A deep convolutional neural network is used to achieve ship body detection, and a feature-based processing method is proposed to detect ship wakes. For better analysis, we model the sea region and evaluate the quality of the image. Generally, the wake detection result is used to assist ship detection and obtain the sailing direction. Conventional methods cannot detect ships that are covered by clouds or outside the image boundary. The method proposed in this paper uses the wake to detect such ships, with a certain level of confidence and low false alarm probability in detection. Practical aspects such as the method's applicability and time efficiency are considered in our method for real applications. We demonstrate the effectiveness of our method in a real remote sensing dataset. The results show that over 93.5% of ships and over 70% of targets with no visible ship body can be successfully detected. This illustrates that the proposed detection framework can fill the gap regarding the detection of sailing ships in a remote sensing image.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11510730PMC
http://dx.doi.org/10.3390/s24206708DOI Listing

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