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Efficient Ship:A Hybrid Deep Learning Framework for Ship Detection in the River

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摘要 Optical image-based ship detection can ensure the safety of ships and promote the orderly management of ships in offshore waters.Current deep learning researches on optical image-based ship detection mainly focus on improving one-stage detectors for real-time ship detection but sacrifices the accuracy of detection.To solve this problem,we present a hybrid ship detection framework which is named EfficientShip in this paper.The core parts of the EfficientShip are DLA-backboned object location(DBOL)and CascadeRCNN-guided object classification(CROC).The DBOL is responsible for finding potential ship objects,and the CROC is used to categorize the potential ship objects.We also design a pixel-spatial-level data augmentation(PSDA)to reduce the risk of detection model overfitting.We compare the proposed EfficientShip with state-of-the-art(SOTA)literature on a ship detection dataset called Seaships.Experiments show our ship detection framework achieves a result of 99.63%(mAP)at 45 fps,which is much better than 8 SOTA approaches on detection accuracy and can also meet the requirements of real-time application scenarios.
出处 《Computer Modeling in Engineering & Sciences》 SCIE EI 2024年第1期301-320,共20页 工程与科学中的计算机建模(英文)
基金 This work was supported by the Outstanding Youth Science and Technology Innovation Team Project of Colleges and Universities in Hubei Province(Grant No.T201923) Key Science and Technology Project of Jingmen(Grant Nos.2021ZDYF024,2022ZDYF019) LIAS Pioneering Partnerships Award,UK(Grant No.P202ED10) Data Science Enhancement Fund,UK(Grant No.P202RE237) Cultivation Project of Jingchu University of Technology(Grant No.PY201904).
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