A compressed sensing scheme for near-field imaging of corrugations of
relative sparse Fourier components is proposed. The scheme employs random
sparse measurement of near field to recover the angular spectrum of the
scattered field. It is shown heuristically and numerically that under the
Rayleigh hypothesis the angular spectrum is compressible and amenable to
compressed sensing techniques.
Iteration schemes are developed for recovering the surface profile from the
angular spectrum.
The proposed nonlinear least squares in the Fourier basis produces accurate
reconstructions even when the Rayleigh hypothesis is known to be false