Abstract
Speckle noise reduction is an important issue in synthetic aperture radar (SAR) imaging. Because SAR images are distinct in being complex valued and susceptible to corruption owing to multiplicative fluctuations, specialized methods for speckle reduction are needed. Techniques based on nonlocal means perform denoising by exploiting the natural redundancy of patterns within an image. They calculate a weighted average of pixels whose neighborhoods are close to one another, where this significantly reduces noise while preserving most image content. While this method performs well on flat areas and textures, its results are excessively smooth in low-contrast areas, and leave residual noise around edges and singular structures. Another variational denoising method uses total variation (TV) minimization to restore regular images but is prone to excessively smooth textures, the staircasing effect, and contrast losses. Our proposed model is intended for the logarithmic domain of SAR data, and combines the above two methods by minimizing an adaptive TV using a nonlocal data fidelity term. In the variational functionals developed here, weighted parameters of nonlocal regularization are adaptively tuned based on local heterogeneity information and noise in the images. A fast iterative shrinkage/thresholding algorithm (FISTA) is then used to solve the optimization problem. The results of experiments on real SAR images verify the effectiveness of the proposed method in terms of speckle reduction.




Similar content being viewed by others
References
Arsenault HH, Levesque M (1984) Combined homomorphic and local statics processing for restoration of images degraded by signal-dependent noise. Appl Opt 23(6):845–850
Aubert G, Aujol J-F (2008) A variational approach to removing multiplicative noise. SIAM J Appl Math 68(4):925–946
Beck A, Teboulle M (2009) Fast gradient-based algorithms for constrained total variation image denoising and deblurring problems. IEEE Trans Image Process 18(11):2419–2434
Buades A, Coll B, Morel JM (2005) A review of image denoising algorithms, with a new one. Multiscale Model Simul 4(2):490–530
Chen J, Chen Y, An W, Cui Y, Yang J (2011) Nonlocal filtering for polarimetric SAR data: a pretest approach. IEEE Trans Geosci Remote Sens 49(5):1744–1754
Coupe P, Hellier P, Kervrann C, Barillot C (2008) Bayesian non local means-based speckle filtering. In: IEEE Int Symp Biomed Imaging, May, pp 1291–1294
Cozzolino D, Parrilli S, Scarpa G, Poggi G, Cerdoliva L (2014) Fast adaptive nonlocal SAR despeckling. IEEE Geosci Remote Sens Lett 11(2):524–528
Deledalle C, Denis L, Tupin F (2009) Iterative weighted maximum likelihood denoising with probabilistic patch-based weights. IEEE Trans Image Process 18(12):2661–2672
Deledalle C-A, Denis L, Tupin F, Jager M (2015) NL-SAR: a unified nonlocal framework for resolution-preserving (pol) (in) SAR denoising. IEEE Trans Geosci Remote Sens 33(4):2021–2038
Deledalle C-A, Denis L, Tabti S, Tupin F (2017) MuLoG, or how to apply Gaussian denoisers to multi-channel SAR speckle reduction? IEEE Trans Image Process 26(9):4389–4402
Erer I, Kaplan NH (2019) Fast local SAR image despeckling by edge-avoiding wavelets. SIViP:1–8
Goodman JW (1976) Some fundamental properties of speckle. J Opt Soc Am 66(11):1145–1150
Huang Y, Moisan L, Ng M, Zeng T (2012) Multiplicative noise removal via a learned dictionary. IEEE Trans Image Process 21(11):4534–4543
Liu X, Zhang H, Cheung Y, You X, Tang Y (2017) Efficient single image dehazing and denoising: an efficient multi-scale correlated wavelet approach. Comput Vis Image Underst 162:23–33
Ma X, Shen H, Zhao X, Zhang L (2016) SAR image despeckling by the use of variational methods with adaptive nonlocal functionals. IEEE Trans Geosci Remote Sens 54(6):3421–3435
Ma X, Wu P, Wu Y, Shen H (2018) A review on recent developments in fully polarimetric SAR image despeckling. IEEE J Sel Top Appl Earth Obs Remote Sens 11(3):743–758
Nie X, Qiao H, Zhang B, Huang X (2016) A nonlocal TV-based variational method for PolSAR data speckle reduction. IEEE Trans Image Process 25(6):2620–2634
Parrilli S, Poderico M, Ngelino CV, Verdoliva L (2012) A nonlocal SAR image denoising algorithm based on LLMMSE wavelet shrinkage. IEEE Trans Geosci Remote Sens 50(2):606–616
Peyre G, Bougleux S, Cohen LD (2011) Non-local regularization of inverse problems. Inverse Probl Imag 5(2):511–530
Rudin L, Lions P-L, Osher S (2003) Multiplicative denoising and deblurring: theory and algorithms. In: Geometric level set methods in imaging, vision, and graphics. Springer, London, pp 103–119
Sutour C, Deledalle C-A, Sujol J-F (2014) Adaptive regularization of the NL-means: application to image and video denoising. IEEE Trans Image Process 23(8):3506–3521
Tang Y, You X (2013) Skeletonization of ribbon-like shapes based on a new wavelet function. IEEE Trans Pattern Anal Mach Intell 25(9):1118–1133
Vasile G, Trouvé E, Lee J, Buzuloiu V (2006) Intensity-driven adaptive neighborhood technique for polarimetric and interferometric SAR parameters estimation. IEEE Trans Geosci Remote Sens 44(6):1609–1621
Xue B, Huang Y, Yang J, Shi L, Zhan Y, Cao X (2013) Fast nonlocal remote sensing image denoising using cosine integral images. IEEE Geosci Remote Sens Lett 10(6):1309–1313
Yan PF, Chen CH (1986) An algorithm for filtering multiplicative noise in wide range. Revue Traitement du Signal 3(2):91–96
Yun S, Woo H (2012) A new multiplicative denoising variational model based on mth root transformation. IEEE Trans Image Process 21(5):2523–2533
Zhong H, Xu J, Jiao L (2009) Classification based nonlocal means despeckling for SAR image. Proc SPIE 7495:74950V
Acknowledgements
This work was supported by the National Natural Science Foundation of China (61572077, 61872042); Key Projects of the Beijing Education Commission (KZ201911417048); The Project of Oriented Characteristic Disciplines (KYDE40201701).
Author information
Authors and Affiliations
Corresponding author
Additional information
Publisher’s note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Wang, R., He, N., Wang, Y. et al. Adaptively weighted nonlocal means and TV minimization for speckle reduction in SAR images. Multimed Tools Appl 79, 7633–7647 (2020). https://doi.org/10.1007/s11042-019-08377-4
Received:
Revised:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11042-019-08377-4