Abstract

Due to its great application value in the military and civilian fields, ship detection in synthetic aperture radar (SAR) images has always attracted much attention. However, ship targets in High-Resolution (HR) SAR images show the significant characteristics of multi-scale, arbitrary directions and dense arrangement, posing enormous challenges to detect ships quickly and accurately. To address these issues above, a novel YOLO-based arbitrary-oriented SAR ship detector using bi-directional feature fusion and angular classification (BiFA-YOLO) is proposed in this article. First of all, a novel bi-directional feature fusion module (Bi-DFFM) tailored to SAR ship detection is applied to the YOLO framework. This module can efficiently aggregate multi-scale features through bi-directional (top-down and bottom-up) information interaction, which is helpful for detecting multi-scale ships. Secondly, to effectively detect arbitrary-oriented and densely arranged ships in HR SAR images, we add an angular classification structure to the head network. This structure is conducive to accurately obtaining ships’ angle information without the problem of boundary discontinuity and complicated parameter regression. Meanwhile, in BiFA-YOLO, a random rotation mosaic data augmentation method is employed to suppress the impact of angle imbalance. Compared with other conventional data augmentation methods, the proposed method can better improve detection performance of arbitrary-oriented ships. Finally, we conduct extensive experiments on the SAR ship detection dataset (SSDD) and large-scene HR SAR images from GF-3 satellite to verify our method. The proposed method can reach the detection performance with precision = 94.85%, recall = 93.97%, average precision = 93.90%, and F1-score = 0.9441 on SSDD. The detection speed of our method is approximately 13.3 ms per 512 × 512 image. In addition, comparison experiments with other deep learning-based methods and verification experiments on large-scene HR SAR images demonstrate that our method shows strong robustness and adaptability.

Highlights

  • Synthetic aperture radar (SAR) can provide massive space-to-earth observation data under 24-h all-weather conditions, widely used in military and civilian fields [1,2,3,4]

  • Motivated by the multiscale feature fusion and arbitrary-oriented object detection methods in optical remote sensing scenes, in this paper, we propose a novel detector based on the YOLO framework for arbitrary-oriented ship detection in HR synthetic aperture radar (SAR) images by combining bi-directional feature fusion with angular classification

  • This section mainly introduces the overall structure of proposed method in this paper and several specific improvement measures, including random rotation mosaic data augmentation (RR-Mosaic), a novel bi-directional feature fusion module (Bi-DFFM) and direction prediction based on angular classification

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Summary

Introduction

Synthetic aperture radar (SAR) can provide massive space-to-earth observation data under 24-h all-weather conditions, widely used in military and civilian fields [1,2,3,4]. With the continuous development of spaceborne SAR imaging technology, the quality and resolution of the acquired SAR images have been continuously improved [5,6]. Ship detection in high-resolution (HR) SAR images has caught the increasing attention and has been widely investigated in recent decades [7,8,9]. Unlike ships in lowresolution and medium-resolution SAR images, ship targets in HR SAR images show the clear geometric structure and scattering characteristics, which are no longer the point targets but the extended targets [10].

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