Title :
SAR Image Regularization With Fast Approximate Discrete Minimization
Author :
Denis, Loïc ; Tupin, Florence ; Darbon, Jérôme ; Sigelle, Marc
Author_Institution :
Inst. TELECOM, TELECOM ParisTech, Paris
fDate :
7/1/2009 12:00:00 AM
Abstract :
Synthetic aperture radar (SAR) images, like other coherent imaging modalities, suffer from speckle noise. The presence of this noise makes the automatic interpretation of images a challenging task and noise reduction is often a prerequisite for successful use of classical image processing algorithms. Numerous approaches have been proposed to filter speckle noise. Markov random field (MRF) modelization provides a convenient way to express both data fidelity constraints and desirable properties of the filtered image. In this context, total variation minimization has been extensively used to constrain the oscillations in the regularized image while preserving its edges. Speckle noise follows heavy-tailed distributions, and the MRF formulation leads to a minimization problem involving nonconvex log-likelihood terms. Such a minimization can be performed efficiently by computing minimum cuts on weighted graphs. Due to memory constraints, exact minimization, although theoretically possible, is not achievable on large images required by remote sensing applications. The computational burden of the state-of-the-art algorithm for approximate minimization (namely the alpha -expansion) is too heavy specially when considering joint regularization of several images. We show that a satisfying solution can be reached, in few iterations, by performing a graph-cut-based combinatorial exploration of large trial moves. This algorithm is applied to joint regularization of the amplitude and interferometric phase in urban area SAR images.
Keywords :
Markov processes; image denoising; minimisation; radar imaging; radar interferometry; synthetic aperture radar; Markov random field; combinatorial optimisation; discrete minimization; image regularization; radar imaging; radar interferometry; speckle noisenoise reduction; synthetic aperture radar; total variation minimization; Combinatorial optimization; Markov random field (MRF); denoising; graph-cuts; minimization methods; speckle; synthetic aperture radar (SAR); total variation (TV);
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2009.2019302