Abstract

Ship detection plays a significant role in military and civil fields. Although some state-of-the-art detection methods, based on convolutional neural networks (CNN) have certain advantages, they still cannot solve the challenge well, including the large size of images, complex scene structure, a large amount of false alarm interference, and inshore ships. This paper proposes a ship detection method from optical remote sensing images, based on visual attention enhanced network. To effectively reduce false alarm in non-ship area and improve the detection efficiency from remote sensing images, we developed a light-weight local candidate scene network(CSN) to extract the local candidate scenes with ships. Then, for the selected local candidate scenes, we propose a ship detection method, based on the visual attention DSOD(VA-DSOD). Here, to enhance the detection performance and positioning accuracy of inshore ships, we both extract semantic features, based on DSOD and embed a visual attention enhanced network in DSOD to extract the visual features. We test the detection method on a large number of typical remote sensing datasets, which consist of Google Earth images and GaoFen-2 images. We regard the state-of-the-art method [sliding window DSOD (SW+DSOD)] as a baseline, which achieves the average precision (AP) of 82.33%. The AP of the proposed method increases by 7.53%. The detection and location performance of our proposed method outperforms the baseline in complex remote sensing scenes.

Highlights

  • With the rapid development of remote sensing technology, ship detection plays a significant role in both military and civil fields, such as military port investigation, dynamic port monitoring, fishery management, and maritime rescue [1,2,3,4,5]

  • This paper proposes a ship detection method from optical remote sensing images based on the visual attention enhanced network

  • In the stage of ship detection from the local candidate scene, we propose a ship detection method method based on the visual attention DSOD(VA-DSOD)

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Summary

Introduction

With the rapid development of remote sensing technology, ship detection plays a significant role in both military and civil fields, such as military port investigation, dynamic port monitoring, fishery management, and maritime rescue [1,2,3,4,5]. Ship detection from remote sensing images often have the large size of image, and the applications for ship detection require high interpretation timeliness. Ships in remote sensing scenes have scale difference between ships and arbitrary-orientation, which make them difficult to accurately detect and locate. Researchers in this field have proposed a series of methods. Traditional detection methods [8,9,10,11,12]: Chao Dong et al [11] constructed a novel visual saliency detection method to locate candidate regions, and a trainable Gaussian support vector machine (SVM) classifier was performed to validate real ships out of ship candidates. The author of this paper used a bottom-up visual attention mechanism to select

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