Abstract

Ship detection based on synthetic aperture radar (SAR) images has made a breakthrough in recent years. However, small ships, which may be regarded as speckle noise, pose enormous challenges to the accurate detection of SAR images. In order to enhance the detection performance of small ships in SAR images, a novel detection method named a spatial information integration network (SII-Net) is proposed in this paper. First, a channel-location attention mechanism (CLAM) module which extracts position information along with two spatial directions is proposed to enhance the detection ability of the backbone network. Second, a high-level features enhancement module (HLEM) is customized to reduce the loss of small target location information in high-level features via using multiple pooling layers. Third, in the feature fusion stage, a refined branch is presented to distinguish the location information between the target and the surrounding region by highlighting the feature representation of the target. The public datasets LS-SSDD-v1.0, SSDD and SAR-Ship-Dataset are used to conduct ship detection tests. Extensive experiments show that the SII-Net outperforms state-of-the-art small target detectors and achieves the highest detection accuracy, especially when the target size is less than 30 pixels by 30 pixels.

Highlights

  • Since the spatial information integration network (SII-Net) network is aimed at improving the detection effect of small-size targets, we first conducted experiments on the small target dataset LS-SSDD-v1.0 to prove the effectiveness of our algorithm

  • Whether it is for algorithms with the attention mechanism modules or the algorithm that uses LS-SSDD-v1.0 publicly, SII-Net achieves the best 76.1% mean average precision (mAP) on the entire scene

  • The ablation experiments present that the addition of the channel-location attention mechanism (CLAM) module and the high-level features enhancement module (HLEM) module achieve 2.4% mAP and 3.3% mAP improvements compared with the baseline model, respectively

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. Synthetic aperture radar (SAR), with the characteristics of all-day and all-weather work, has broad application prospects in both the military and civilian fields. Among the SAR applications, ship detection plays an important role in maritime management and monitoring. Compared with optical images, the process of SAR images is more difficult due to their lower resolution. The accurate location of SAR ships with relatively small pixels remains a significant challenge. LS-SSDD-v1.0 is is aa large-scale large-scale background SAR ship detection dataset. (the first images are selected as a training set, andset, theand remaining are selected Sentinel-1

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