z-logo
open-access-imgOpen Access
LINEAR ARRAY SAR IMAGING VIA COMPRESSED SENSING
Author(s) -
Shunjun Wei,
Xiaoling Zhang,
Jun Shi
Publication year - 2011
Publication title -
electromagnetic waves
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.437
H-Index - 89
eISSN - 1559-8985
pISSN - 1070-4698
DOI - 10.2528/pier11033105
Subject(s) - compressed sensing , remote sensing , computer science , computer vision , geology , artificial intelligence
In recent years, various attempts have been undertaken to obtain three-dimensional (3-D) re∞ectivity of observed scene from synthetic aperture radar (SAR) technique. Linear array SAR (LASAR) has been demonstrated as a promising technique to achieve 3-D imaging of earth surface. The common methods used for LASAR imaging are usually based on matched fllter (MF) which obeys the traditional Nyquist sampling theory. However, due to limitation in the length of linear array and the \Rayleigh" resolution, the standard MF- based methods sufier from low resolution and high sidelobes. Hence, high resolution imaging algorithms are desired. In LASAR images, dominating scatterers are always sparse compared with the total 3- D illuminated space cells. Combined with this prior knowledge of sparsity property, this paper presents a novel algorithm for LASAR imaging via compressed sensing (CS). The theory of CS indicates that sparse signal can be exactly reconstructed in high Signal-Noise- Ratio (SNR) level by solving a convex optimization problem with a very small number of samples. To overcome strong noise and clutter interference in LASAR raw echo, the new method flrstly achieves range focussing by a pulse compression technique, which can greatly improve SNR level of signal in both azimuth and cross- track directions. Then, the resolution enhancement images of sparse targets are reconstructed by L1 norm regularization. High resolution properties and point localization accuracies are tested and verifled by simulation and real experimental data. The results show that the CS method outperforms the conventional MF-based methods, even if very small random selected samples are used.

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here
Accelerating Research

Address

John Eccles House
Robert Robinson Avenue,
Oxford Science Park, Oxford
OX4 4GP, United Kingdom