Author/Authors :
DeGraaf، نويسنده , , S.R.، نويسنده ,
Abstract :
This paper discusses the use of modern two-dimensional
(2-D) spectral estimation algorithms for synthetic aperture
radar (SAR) imaging. The motivation for applying power
spectrum estimation methods to SAR imaging is to improve resolution,
remove sidelobe artifacts, and reduce speckle compared to
what is possible with conventional Fourier transform SAR imaging
techniques. This paper makes two principal contributions
to the field of adaptive SAR imaging. First, it is a comprehensive
comparison of 2-D spectral estimation methods for SAR
imaging. It provides a synopsis of the algorithms available,
discusses their relative merits for SAR imaging, and illustrates
their performance on simulated and collected SAR imagery.
Some of the algorithms presented or their derivations are new,
as are some of the insights into or analyses of the algorithms.
Second, this work develops multichannel variants of four related
algorithms, minimum variance method (MVM), reduced-rank
MVM (RRMVM), adaptive sidelobe reduction (ASR) and space
variant apodization (SVA) to estimate both reflectivity intensity
and interferometric height from polarimetric displaced-aperture
interferometric data. All of these interferometric variants are
new. In the interferometric context, adaptive spectral estimation
can improve the height estimates through a combination of adaptive
nulling and averaging. Examples illustrate that MVM, ASR,
and SVA offer significant advantages over Fourier methods for
estimating both scattering intensity and interferometric height,
and allow empirical comparison of the accuracies of Fourier,
MVM, ASR, and SVA interferometric height estimates.
Keywords :
Superresolution , 2-D spectral estimation. , Adaptive imaging , Syntheticaperture radar