Title :
The ZπM algorithm: a method for interferometric image reconstruction in SAR/SAS
Author :
Dias, José M B ; Leitão, José M N
Author_Institution :
Instituto de Telecomunicacoes, Instituto Superior Tecnico, Lisbon, Portugal
fDate :
4/1/2002 12:00:00 AM
Abstract :
This paper presents an effective algorithm for absolute phase (not simply modulo-2-π) estimation from incomplete, noisy and modulo-2π observations in interferometric aperture radar and sonar (InSAR/InSAS). The adopted framework is also representative of other applications such as optical interferometry, magnetic resonance imaging and diffraction tomography. The Bayesian viewpoint is adopted; the observation density is 2-π-periodic and accounts for the interferometric pair decorrelation and system noise; the a priori probability of the absolute phase is modeled by a compound Gauss-Markov random field (CGMRF) tailored to piecewise smooth absolute phase images. We propose an iterative scheme for the computation of the maximum a posteriori probability (MAP) absolute phase estimate. Each iteration embodies a discrete optimization step (Z-step), implemented by network programming techniques and an iterative conditional modes (ICM) step (π-step). Accordingly, the algorithm is termed ZπM, where the letter M stands for maximization. An important contribution of the paper is the simultaneous implementation of phase unwrapping (inference of the 2π-multiples) and smoothing (denoising of the observations). This improves considerably the accuracy of the absolute phase estimates compared to methods in which the data is low-pass filtered prior to unwrapping. A set of experimental results, comparing the proposed algorithm with alternative methods, illustrates the effectiveness of our approach
Keywords :
Gaussian processes; Markov processes; image reconstruction; iterative methods; light interferometry; optimisation; phase estimation; radar imaging; sonar imaging; tomography; Bayesian estimation; MAP absolute phase estimate; SAR/SAS; a priori probability; algorithm; compound Gauss-Markov random field; diffraction tomography; discrete optimization; interferometric aperture radar; interferometric aperture sonar; interferometric image reconstruction; interferometric pair decorrelation; iterative conditional modes; iterative scheme; low-pass filtered data; magnetic resonance imaging; maximum a posteriori probability; modulo-2π observations; network programming; noisy observations; observation density; optical interferometry; phase unwrapping; piecewise smooth absolute phase images; system noise; Inference algorithms; Magnetic noise; Magnetic resonance imaging; Optical interferometry; Optical noise; Phase estimation; Phase noise; Radar imaging; Sonar; Synthetic aperture radar interferometry;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2002.999675