Shen Fangfang, Zhao Guanghui, Shi Guangming, Dong Weisheng, Wang Chenglong, Niu Yi
School of Electronic Engineering, Xidian University, Xi'an 710071, China.
Sensors (Basel). 2015 Feb 12;15(2):4176-92. doi: 10.3390/s150204176.
Compressive sensing-based synthetic aperture radar (SAR) imaging has shown its superior capability in high-resolution image formation. However, most of those works focus on the scenes that can be sparsely represented in fixed spaces. When dealing with complicated scenes, these fixed spaces lack adaptivity in characterizing varied image contents. To solve this problem, a new compressive sensing-based radar imaging approach with adaptive sparse representation is proposed. Specifically, an autoregressive model is introduced to adaptively exploit the structural sparsity of an image. In addition, similarity among pixels is integrated into the autoregressive model to further promote the capability and thus an adaptive sparse representation facilitated by a weighted autoregressive model is derived. Since the weighted autoregressive model is inherently determined by the unknown image, we propose a joint optimization scheme by iterative SAR imaging and updating of the weighted autoregressive model to solve this problem. Eventually, experimental results demonstrated the validity and generality of the proposed approach.
基于压缩感知的合成孔径雷达(SAR)成像在高分辨率图像形成方面已展现出卓越能力。然而,这些工作大多聚焦于能在固定空间中稀疏表示的场景。在处理复杂场景时,这些固定空间在表征多样图像内容方面缺乏适应性。为解决此问题,提出一种基于压缩感知的具有自适应稀疏表示的雷达成像新方法。具体而言,引入自回归模型以自适应地利用图像的结构稀疏性。此外,将像素间的相似性整合到自回归模型中以进一步提升性能,从而导出由加权自回归模型促成的自适应稀疏表示。由于加权自回归模型本质上由未知图像决定,我们提出一种通过迭代SAR成像和更新加权自回归模型的联合优化方案来解决此问题。最终,实验结果证明了所提方法的有效性和通用性。