Title :
Super-resolution Fourier transforms by optimisation, and ISAR imaging
Author_Institution :
Signition Inc., Los Alamos, NM, USA
Abstract :
5A method for super-resolution ISAR imaging, denoising, and error estimation is developed using a novel Fourier transform that exploits the a priori information that the image is sparse, i.e. contains relatively few bright points. The method applies nonlinear optimisation to the complex-valued pixels to estimate the image by minimising its l1-norm. Noiseless images require linear programming, while quadratic programming with logarithmic barriers is necessary when complex-valued Gaussian noise is present. The novel Fourier transform, which is referred to as the l1-FFT, works with ´missing´ data points, making ´jackknife´ estimates of the mean and variance of each pixel value possible. These estimates should aid in image classification. This work extends earlier work of Chen, Donoho and Saunders on basis pursuit and denoising to complex signals, by formulating and solving the corresponding complex-valued nonlinear optimisation problems
Keywords :
Fourier transforms <optim., ISAR imaging, super-resoln. FT>; Gaussian noise <optim., ISAR imaging, super-resoln. FT>; image classification <optim., ISAR imaging, super-resoln. FT>; image denoising <optim., ISAR imaging, super-resoln. FT>; image resolution <optim., ISAR imaging, super-resoln. FT>; linear programming <optim., ISAR imaging, super-resoln. FT>; quadratic programming <optim., ISAR imaging, super-resoln. FT>; radar imaging <optim., ISAR imaging, super-resoln. FT>; radar resolution <optim., ISAR imaging, super-resoln. FT>; synthetic aperture radar <optim., ISAR imaging, super-resoln. FT>; complex signals; complex-valued Gaussian noise; complex-valued nonlinear optimisation problems; complex-valued pixels; image classification; linear programming; logarithmic barriers; missing data points; noiseless images; quadratic programming; super-resolution Fourier transforms; super-resolution ISAR imaging;
Journal_Title :
Radar, Sonar and Navigation, IEE Proceedings -
DOI :
10.1049/ip-rsn:20030727