Ship Detection in Remote Sensing Imagery for Arbitrarily Oriented Object Detection
Journal:
arXiv
Published Date:
Mar 17, 2025
Abstract
This research paper presents an innovative ship detection system tailored for
applications like maritime surveillance and ecological monitoring. The study
employs YOLOv8 and repurposed U-Net, two advanced deep learning models, to
significantly enhance ship detection accuracy. Evaluation metrics include Mean
Average Precision (mAP), processing speed, and overall accuracy. The research
utilizes the "Airbus Ship Detection" dataset, featuring diverse remote sensing
images, to assess the models' versatility in detecting ships with varying
orientations and environmental contexts. Conventional ship detection faces
challenges with arbitrary orientations, complex backgrounds, and obscured
perspectives. Our approach incorporates YOLOv8 for real-time processing and
U-Net for ship instance segmentation. Evaluation focuses on mAP, processing
speed, and overall accuracy. The dataset is chosen for its diverse images,
making it an ideal benchmark. Results demonstrate significant progress in ship
detection. YOLOv8 achieves an 88% mAP, excelling in accurate and rapid ship
detection. U Net, adapted for ship instance segmentation, attains an 89% mAP,
improving boundary delineation and handling occlusions. This research enhances
maritime surveillance, disaster response, and ecological monitoring,
exemplifying the potential of deep learning models in ship detection.