Abstract

It is expensive and time-consuming to obtain a large number of labeled synthetic aperture radar (SAR) images. In the task of small training data size, the results of target detection on SAR images using deep network approaches are usually not ideal. In this study, considering that optical remote sensing images are much easier to be labeled than SAR images, we assume to have a large number of labeled optical remote sensing images and a small number of labeled SAR images with the similar scenes, propose to transfer knowledge from optical remote sensing images to SAR images, and develop a domain adaptive Faster R-CNN for SAR target detection with small training data size. In the proposed method, in order to make full use of the label information and realize more accurate domain adaptation knowledge transfer, an instance level domain adaptation constraint is used rather than feature level domain adaptation constraint. Specifically, generative adversarial network (GAN) constraint is applied as the domain adaptation constraint in the adaptation module after the proposals of Faster R-CNN to achieve instance level domain adaptation and learn the transferable features. The experimental results on the measured SAR image dataset show that the proposed method has higher detection accuracy in the task of SAR target detection with small training data size than the traditional Faster R-CNN.

Highlights

  • Synthetic aperture radar (SAR) is an active Earth observation system, which has the characteristics of all-weather, all-time, high resolution and strong penetration

  • Constraint is applied as the domain adaptation constraint in the adaptation module after the proposals of Faster R-convolution neural network (CNN) to achieve instance level domain adaptation and learn the transferable features

  • One SAR image dataset and one optical remote sensing image dataset are adopted to conduct some experiments to verify the effectiveness of our method

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Summary

Introduction

Synthetic aperture radar (SAR) is an active Earth observation system, which has the characteristics of all-weather, all-time, high resolution and strong penetration. Automatic target recognition (ATR) of SAR image has become a key technology for processing massive SAR image data. A typical SAR image ATR system is usually divided into three stages: detection, discrimination and recognition. SAR image target detection technology is important for the SAR ATR because the performance of the detection stage will directly affect the accuracy of the subsequent processing. The existing SAR image target detection methods can be divided into two types: nonlearning target detection algorithm and learning based target detection algorithm. Constant false alarm rate (CFAR) [1] is a kind of traditional non-learning target detection algorithm which is widely used in SAR system for SAR target detection. The SAR target detection methods based on Faster R-CNN can achieve satisfying performance, a large number of labeled training

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