Abstract

A target detection method based on an improved single shot multibox detector (SSD) is proposed to solve insufficient training samples for synthetic aperture radar (SAR) target detection. We propose two strategies to improve the SSD: model structure optimization and small sample augmentation. For model structure optimization, the first approach is to extract deep features of the target with residual networks instead of with VGGNet. Then, the aspect ratios of the default boxes are redesigned to match the different targets’ sizes. For small sample augmentation, besides the routine image processing methods, such as rotating, translating, and mirroring, enough training samples are obtained based on the saliency map theory in machine vision. Lastly, a simulated SAR image dataset called Geometric Objects (GO) is constructed, which contains dihedral angles, surface plates and cylinders. The experimental results on the GO-simulated image dataset and the MSTAR real image dataset demonstrate that the proposed method has better performance in SAR target detection than other detection methods.

Highlights

  • IntroductionSynthetic aperture radar (SAR) is an active earth observation system with high resolution

  • We carried out experiments on two different datasets: the Geometric Objects (GO)

  • The MSTAR dataset is a representative public dataset for synthetic aperture radar (SAR) target recognition, which includes a total of 10 categories of military targets

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Summary

Introduction

Synthetic aperture radar (SAR) is an active earth observation system with high resolution. With the increasing improvement of SAR data collection capability and imaging algorithms, the research on interpreting high-resolution SAR images has received extensive attention, such as target detection and change detection [5,6]. Traditional SAR target detection algorithms include the constant false alarm rate (CFAR) method [7,8], template matching method [9,10], etc. These methods primarily embark on feature extraction and classifier design, which require highly manual involvement, complex design process, and have poor detection performance in complex scenes

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