The paper describes a class of adaptive weighting functions that greatly reduce sidelobes, interference, and noise in Fourier transform data. By restricting the class of adaptive weighting functions, the adaptively weighted Fourier transform data can be represented as the convolution of the unweighted Fourier transform with a data adaptive FIR filter where one selects the FIR filter coefficients to maximize signal-to-interference ratio. This adaptive sidelobe reduction (ASR) procedure is analogous to Capon's (1969) minimum variance method (MVM) of adaptive spectral estimation. Unlike MVM, which provides a statistical estimate of the real-valued power spectral density, thereby estimating noise level and improving resolution, ASR provides a single-realization complex-valued estimate of the Fourier transform that suppresses sidelobes and noise. Further, the computational complexity of ASR is dramatically lower than that of MVM, which is critical for large multidimensional problems such as synthetic aperture radar (SAR) image formation. ASR performance characteristics can be varied through the choice of filter order, l(1)- or l(2)-norm filter vector constraints and a separable or nonseparable multidimensional implementation. The author compares simulated point scattering SAR imagery produced by the ASR, MVM, and MUSIC algorithms and illustrates ASR performance on three sets of collected SAR imagery.
[1]
D.H. Johnson,et al.
The application of spectral estimation methods to bearing estimation problems
,
1982,
Proceedings of the IEEE.
[2]
L.E. Brennan,et al.
Theory of Adaptive Radar
,
1973,
IEEE Transactions on Aerospace and Electronic Systems.
[3]
T. Taylor.
Design of line-source antennas for narrow beamwidth and low side lobes
,
1955
.
[4]
F. Harris.
On the use of windows for harmonic analysis with the discrete Fourier transform
,
1978,
Proceedings of the IEEE.
[5]
S. DeGraaf,et al.
Improving the resolution of bearing in passive sonar arrays by eigenvalue analysis
,
1981
.
[6]
Mehrdad Soumekh.
A system model and inversion for synthetic aperture radar imaging
,
1992,
IEEE Trans. Image Process..
[7]
Don H. Johnson,et al.
Capabilitiy of array processing algorithms to estimate source bearings
,
1985,
IEEE Trans. Acoust. Speech Signal Process..
[8]
J. Capon.
High-resolution frequency-wavenumber spectrum analysis
,
1969
.
[9]
A. Nuttall,et al.
A two-parameter class of Bessel weightings for spectral analysis or array processing--The ideal weighting-window pairs
,
1983
.