论文标题

基于共识AMPM的广泛分布雷达成像

Widely-distributed Radar Imaging Based on Consensus ADMM

论文作者

Hu, Ruizhi, Rao, Bhavani Shankar Mysore Rama, Murtada, Ahmed, Alaee-Kerahroodi, Mohammad, Ottersten, Björn

论文摘要

广泛分布的雷达系统是增强雷达成像性能的有前途的结构。但是,大多数现有的算法都依赖于各向同性散射假设,这仅在雷达系统中得到满足。此外,由于噪声和成像模型的缺陷,诸如中途停留的伪影在雷达图像中很常见。在本文中,提出了一种新颖的$ l_1 $ regolarized,共识的方向方法(CADMM)算法,提出了通过利用广泛分布的雷达系统的空间多样性来减轻伪像的方法。通过对由分布式天线簇形成的本地图像施加共识约束并解决所得的分布式优化问题,则保留了场景的空间不变性共同特征。同时,缓解了空间变化的伪影,并最终将在所有分布式测量的共识中收敛到高质量的全局图像。所提出的算法在减轻伪影方面优于基于关节稀疏性的复合成像(JSC)算法。它还可以通过其分布式和可行的优化方案来减少大规模成像问题的计算和存储负担。

A widely-distributed radar system is a promising architecture to enhance radar imaging performance. However, most existing algorithms rely on isotropic scattering assumption, which is only satisfied in collocated radar systems. Moreover, due to noise and imaging model imperfections, artifacts such as layovers are common in radar images. In this paper, a novel $l_1$-regularized, consensus alternating direction method of multipliers (CADMM) based algorithm is proposed to mitigate artifacts by exploiting a widely-distributed radar system's spatial diversity. By imposing the consensus constraints on the local images formed by distributed antenna clusters and solving the resulting distributed optimization problem, the scenario's spatial-invariant common features are retained. Simultaneously, the spatial-variant artifacts are mitigated, and it will finally converge to a high-quality global image in the consensus of all distributed measurements. The proposed algorithm outperforms the joint sparsity-based composite imaging (JSC) algorithm in terms of artifacts mitigation. It can also reduce the computation and storage burden of large-scale imaging problems through its distributed and parallelizable optimization scheme.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源