Abstract

Due to strong ocean waves, broken clouds, and extensive cloud cover interferences, ocean ship detection performs poorly when using optical remote sensing images. In addition, it is a challenge to detect small ships on medium resolution optical remote sensing that cover a large area. In this paper, in order to balance the requirements of real-time processing and high accuracy detection, we proposed a novel ship detection framework based on locally oriented scene complexity analysis. First, the proposed method can separate a full image into two types of local scenes (i.e., simple or complex local scenes). Next, simple local scenes would utilize the fast saliency model (FSM) to rapidly complete candidate extraction, and for complex local scenes, the ship feature clustering model (SFCM) will be applied to achieve refined detection against severe background interferences. The FSM considers a fusion enhancement image as an input of the pulse response analysis in the frequency domain to achieve rapid ship detection in simple local scenes. Next, the SFCM builds the descriptive model of the ship feature clustering algorithm to ensure the detection performance on complex local scenes. Extensive experiments on SPOT-5 and GF-2 ocean optical remote sensing images show that the proposed ship detection framework has better performance than the state-of-the-art methods, and it addresses the tricky problem of real-time ocean ship detection under strong waves, broken clouds, extensive cloud cover, and ship fleet interferences. Finally, the proposed ocean ship detection framework is demonstrated on an onboard processing hardware.

Highlights

  • Ocean ship detection is an active research field in remote sensing technology

  • If the original image is analyzed in the frequency domain, the low contrast ratio ship targets would be lost during the candidate extraction stage, which would lead to a bad ship detection performance

  • For large view ocean ship detection, the task must meet the detection timeliness and accuracy requirements based on ship movements and certain complex background interferences

Read more

Summary

Introduction

Ocean ship detection is an active research field in remote sensing technology. This field is primarily applied to fishery management, vessel salvaging, and naval warfare applications. Synthetic aperture radar (SAR) images have typically been used for ship detection research because. Compared to SAR images, optical remote sensing images can provide more detailed and visible characteristics for ship detection and classification [5,6]. The typical optical ocean ship detection framework has two stages which are ship candidate extraction and confirmation. In the ship candidate extraction stage, the performance is affected by the gray level or shape diversification of ships and complex

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call