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Citation
Mahdianpari M, Motagh M, Akbari V, Mohammadimanesh F & Salehi B (2019) A Gaussian random field model for de-speckling of multi-polarized Synthetic Aperture Radar data. Advances in Space Research, 64 (1), pp. 64-78. https://doi.org/10.1016/j.asr.2019.03.013
Abstract
Synthetic Aperture Radar (SAR) data have gained interest for a variety of remote sensing applications, given the capability of SAR
sensors to operate independent of solar radiation and day/night conditions. However, the radiometric quality of SAR images is hindered by speckle noise, which affects further image processing and interpretation. As such, speckle reduction is a crucial pre-processing step in many remote sensing studies based on SAR imagery. This study proposes a new adaptive de-speckling method based on a Gaussian
Markov Random Field (GMRF) model. The proposed method integrates both pixel-wised and contextual information using a weighted summation technique. As a by-product of the proposed method, a de-speckled pseudo-span image, which is obtained from the leastsquares analysis of the de-speckled multi-polarization channels, is also produced. Experimental results from the medium resolution, fully polarimetric L-band ALOS PALSAR data demonstrate the effectiveness of the proposed algorithm compared to other well-known despeckling approaches. The de-speckled images produced by the proposed method maintainthe mean value of the original image inhomogenous areas, while preserving the edges of features in heterogeneous regions. In particular, the equivalent number of look
(ENL) achieved using the proposed method improves by about 15% and 47% compared to the NL-SAR and SARBM3D despeckling approaches, respectively. Other evaluation indices, such as the mean and variance of the ratio image also reveal the superiority
of the proposed method relative to other de-speckling approaches examined in this study.
Keywords
Synthetic Aperture Radar (SAR)De-specklingMarkov random field (MRF)ALOS PALSARGaussianContextual analysis
Journal
Advances in Space Research: Volume 64, Issue 1
Status | Published |
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Funders | |
Publication date | 31/07/2019 |
Publisher | Elsevier BV |
ISSN | 0273-1177 |
People (1)
Lect in Artificial Intelligence/Data Sci, Computing Science and Mathematics - Division