Journal of Marine Science and Engineering (Aug 2024)

A New Efficient Ship Detection Method Based on Remote Sensing Images by Device–Cloud Collaboration

  • Tao Liu,
  • Yun Ye,
  • Zhengling Lei,
  • Yuchi Huo,
  • Xiaocai Zhang,
  • Fang Wang,
  • Mei Sha,
  • Huafeng Wu

DOI
https://doi.org/10.3390/jmse12081422
Journal volume & issue
Vol. 12, no. 8
p. 1422

Abstract

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Fast and accurate detection of ship objects in remote sensing images must overcome two critical problems: the complex content of remote sensing images and the large number of small objects reduce ship detection efficiency. In addition, most existing deep learning-based object detection models require vast amounts of computation for training and prediction, making them difficult to deploy on mobile devices. This paper focuses on an efficient and lightweight ship detection model. A new efficient ship detection model based on device–cloud collaboration is proposed, which achieves joint optimization by fusing the semantic segmentation module and the object detection module. We migrate model training, image storage, and semantic segmentation, which require a lot of computational power, to the cloud. For the front end, we design a mask-based detection module that ignores the computation of nonwater regions and reduces the generation and postprocessing time of candidate bounding boxes. In addition, the coordinate attention module and confluence algorithm are introduced to better adapt to the environment with dense small objects and substantial occlusion. Experimental results show that our device–cloud collaborative approach reduces the computational effort while improving the detection speed by 42.6% and also outperforms other methods in terms of detection accuracy and number of parameters.

Keywords