Coarse-to-Fine Structure and Semantic Learning for Single-Sample SAR Image Generation

Author:

Wang Xilin1,Hui Bingwei2,Guo Pengcheng1,Jin Rubo2,Ding Lei3ORCID

Affiliation:

1. Xi’an Electronic Engineering Research Institute, China North Industries Group Corporation Limited, Xi’an 710100, China

2. College of Electronic Science and Technology, National University of Defense Technology, Changsha 410073, China

3. Key Laboratory of Remote Sensing and Digital Earth, Chinese Academy of Sciences Aerospace Information Research Institute, Beijing 100094, China

Abstract

Synthetic Aperture Radar (SAR) enables the acquisition of high-resolution imagery even under severe meteorological and illumination conditions. Its utility is evident across a spectrum of applications, particularly in automatic target recognition (ATR). Since SAR samples are often scarce in practical ATR applications, there is an urgent need to develop sample-efficient augmentation techniques to augment the SAR images. However, most of the existing generative approaches require an excessive amount of training samples for effective modeling of the SAR imaging characteristics. Additionally, they show limitations in augmenting the interesting target samples while maintaining image recognizability. In this study, we introduce an innovative single-sample image generation approach tailored to SAR data augmentation. To closely approximate the target distribution across both the spatial layout and local texture, a multi-level Generative Adversarial Network (GAN) architecture is constructed. It comprises three distinct GANs that independently model the structural, semantic, and texture patterns. Furthermore, we introduce multiple constraints including prior-regularized noise sampling and perceptual loss optimization to enhance the fidelity and stability of the generation process. Comparative evaluations against the state-of-the-art generative methods demonstrate the superior performance of the proposed method in terms of generation diversity, recognizability, and stability. In particular, its advantages over the baseline method are up to 0.2 and 0.22 in the SIFID and SSIM, respectively. It also exhibits stronger robustness in the generation of images across varying spatial sizes.

Funder

Military Science and Technology Commission of the Communist Party Central Committee (CSTC) Foundation Strengthening Program

Publisher

MDPI AG

Reference60 articles.

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