An Image Focusing Method for Sparsity-Driven Radar Imaging of Rotating Targets
Overview
Affiliations
This paper presents a new image focusing algorithm for sparsity-driven radar imaging of rotating targets. In the general formulation of off-grid scatterers, the sparse reconstruction algorithms may result in blurred and low-contrast images due to dictionary mismatch. Motivated by the natural clustering of atoms in the sparsity-based reconstructed images, the proposed algorithm first partitions the atoms into separate clusters, and then the true off-grid scatterers associated with each cluster are estimated. Being a post-processing technique, the proposed algorithm is computationally simple, while at the same time being capable of producing a sharp and correct-contrast image, and attaining a scatterer parameter estimation performance close to the Cramér⁻Rao lower bound. Numerical simulations are presented to corroborate the effectiveness of the proposed algorithm.
Compressive Sensing-Based Bandwidth Stitching for Multichannel Microwave Radars.
Berry P, Nguyen N, Tran H Sensors (Basel). 2020; 20(3).
PMID: 31991710 PMC: 7038352. DOI: 10.3390/s20030665.
Compressive Sensing for Tomographic Imaging of a Target with a Narrowband Bistatic Radar.
Nguyen N, Berry P, Tran H Sensors (Basel). 2019; 19(24).
PMID: 31847207 PMC: 6960522. DOI: 10.3390/s19245515.
Xing Y, You P, Yong S Sensors (Basel). 2018; 18(9).
PMID: 30142947 PMC: 6164716. DOI: 10.3390/s18092773.