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arxiv: 1704.05335 · v1 · pith:O2QGE45Jnew · submitted 2017-04-18 · 🧮 math.ST · stat.AP· stat.TH

MuLoG, or How to apply Gaussian denoisers to multi-channel SAR speckle reduction?

classification 🧮 math.ST stat.APstat.TH
keywords reductionspecklegaussiandenoisingmulti-channelalgorithmsdenoisersimage
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Speckle reduction is a longstanding topic in synthetic aperture radar (SAR) imaging. Since most current and planned SAR imaging satellites operate in polarimetric, interferometric or tomographic modes, SAR images are multi-channel and speckle reduction techniques must jointly process all channels to recover polarimetric and interferometric information. The distinctive nature of SAR signal (complex-valued, corrupted by multiplicative fluctuations) calls for the development of specialized methods for speckle reduction. Image denoising is a very active topic in image processing with a wide variety of approaches and many denoising algorithms available, almost always designed for additive Gaussian noise suppression. This paper proposes a general scheme, called MuLoG (MUlti-channel LOgarithm with Gaussian denoising), to include such Gaussian denoisers within a multi-channel SAR speckle reduction technique. A new family of speckle reduction algorithms can thus be obtained, benefiting from the ongoing progress in Gaussian denoising, and offering several speckle reduction results often displaying method-specific artifacts that can be dismissed by comparison between results.

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