Title :
A Compressive Sensing Approach to Multistatic Radar Change Imaging
Author :
Kreucher, C. ; Brennan, Margaret
Author_Institution :
Integrity Applic., Ann Arbor, MI, USA
Abstract :
This paper describes a new approach for forming change images from multistatic radar data based on compressive sensing (CS). Broadly speaking, change images are naturally sparse in the raw image domain, which suggests a CS reconstruction method. Recent results show that the sparsity of the estimand dictates the number of samples required for faithful reconstruction, meaning a change image can be formed with far fewer measurements than used for conventional radar imaging. Our application has a small number of antennas arranged around the perimeter of a surveillance region, which provide large angular diversity but very poor angular sampling. Furthermore, due to application constraints, the scene is interrogated with limited frequency diversity. We aim to construct a high-resolution change image from the measurements, which are sub-Nyquist both spatially and in frequency. This paper first develops a radar imaging model in the context of CS, and then shows with collected data that a sparseness model improves image utility over conventional methods in our setting.
Keywords :
antennas; compressed sensing; radar imaging; angular diversity; angular sampling; antennas; compressive sensing approach; compressive sensing reconstruction method; limited frequency diversity; multistatic radar change imaging; surveillance region; Antenna measurements; Data models; Frequency measurement; Imaging; Radar imaging; Transmitters; Change imaging; compressive sensing (CS); radar; sparse model;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2013.2247408