Patch-based adaptive temporal filter and residual evaluation
Abstract: In coherent imaging systems, speckle is a signal-dependent noise that visually strongly degrades images' appearance. A huge amount of SAR data has been acquired from different sensors with different wavelengths, resolutions, incidences and polarizations. We extend the nonlocal filtering strategy to the temporal domain and propose a patch-based adaptive temporal filter (PATF) to take advantage of well-registered multi-temporal SAR images. A patch-based generalised likelihood ratio test is processed to suppress the changed object effects on the multitemporal denoising results. Then, the similarities are transformed into corresponding weights with an exponential function. The denoised value is calculated with a temporal weighted average. Spatial adaptive denoising methods can improve the patch-based weighted temporal average image when the time series is limited. The spatial adaptive denoising step is optional when the time series is large enough. Without reference image, we propose using a patch-based auto-covariance residual evaluation method to examine the ratio image between the noisy and denoised images and look for possible remaining structural contents. It can process automatically and does not rely on a supervised selection of homogeneous regions. It also provides a global score for the whole image. Numerous results demonstrate the effectiveness of the proposed time series denoising method and the usefulness of the residual evaluation method.
- S.Ā Parrilli, M.Ā Poderico, C.Ā Angelino, and L.Ā Verdoliva, āA nonlocal SAR image denoising algorithm based on LLMMSE wavelet shrinkage,ā IEEE Transactions on Geoscience and Remote Sensing, vol.Ā 50, no.Ā 2, pp. 606ā616, 2012.
- C.Ā Deledalle, L.Ā Denis, F.Ā Tupin, Reigber, and M.Ā A. and JƤger, āNL-SAR: A unified nonlocal framework for resolution-preserving (Pol)(In) SAR denoising,ā IEEE Transactions on Geoscience and Remote Sensing, vol.Ā 53, no.Ā 4, pp. 2021ā2038, 2015.
- J.Ā Lee, M.Ā Grunes, and S.Ā Mango, āSpeckle reduction in multipolarization, multifrequency SAR imagery,ā IEEE Transactions on Geoscience and Remote Sensing, vol.Ā 29, no.Ā 4, pp. 535ā544, 1991.
- S.Ā Quegan and J.Ā Yu, āFiltering of multichannel SAR images,ā IEEE Transactions on Geoscience and Remote Sensing, vol.Ā 39, no.Ā 11, pp. 2373ā2379, 2001.
- S.Ā Quegan, T.Ā LeĀ Toan, J.Ā Yu, F.Ā Ribbes, and N.Ā Floury, āMultitemporal ERS SAR analysis applied to forest mapping,ā IEEE Transactions on Geoscience and Remote Sensing, vol.Ā 38, no.Ā 2, pp. 741ā753, 2000.
- T.Ā LĆŖ, A.Ā Atto, E.Ā TrouvĆ©, and J.-M. Nicolas, āAdaptive multitemporal SAR image filtering based on the change detection matrix,ā IEEE Geoscience and Remote Sensing Letters, vol.Ā 11, no.Ā 10, pp. 1826ā1830, 2014.
- T.Ā LĆŖ, A.Ā Atto, E.Ā TrouvĆ©, A.Ā Solikhin, and V.Ā Pinel, āChange detection matrix for multitemporal filtering and change analysis of SAR and PolSAR image time series,ā ISPRS Journal of Photogrammetry and Remote Sensing, vol. 107, pp. 64ā76, 2015.
- X.Ā Su, C.Ā Deledalle, F.Ā Tupin, and H.Ā Sun, āTwo-step multitemporal nonlocal means for synthetic aperture radar images,ā IEEE Transactions on Geoscience and Remote Sensing, vol.Ā 52, no.Ā 10, pp. 6181ā6196, 2014.
- M.Ā Ciuc, P.Ā Bolon, E.Ā TrouvĆ©, V.Ā Buzuloiu, and J.Ā Rudant, āAdaptive-neighborhood speckle removal in multitemporal Synthetic Aperture Radar images,ā Applied Optics, vol.Ā 40, no.Ā 32, pp. 5954ā5966, 2001.
- G.Ā Chierchia, M.Ā ElĀ Gheche, G.Ā Scarpa, and L.Ā Verdoliva, āMultitemporal SAR image despeckling based on block-matching and collaborative filtering,ā IEEE Transactions on Geoscience and Remote Sensing, vol.Ā 55, no.Ā 10, pp. 5467ā5480, 2017.
- W.Ā Zhao, C.-A. Deledalle, L.Ā Denis, H.Ā MaĆ®tre, J.-M. Nicolas, and F.Ā Tupin, āRatio-based multitemporal sar images denoising: RABASAR,ā IEEE Transactions on Geoscience and Remote Sensing, 2019.
- C.Ā Deledalle, L.Ā Denis, and F.Ā Tupin, āIterative weighted maximum likelihood denoising with probabilistic patch-based weights,ā IEEE Transactions on Image Processing, vol.Ā 18, no.Ā 12, pp. 2661ā2672, 2009.
- D.Ā Coltuc, E.Ā TrouvĆ©, F.Ā Bujor, N.Ā Classeau, and J.Ā Rudant, āTime-space filtering of multitemporal SAR images,ā In Geoscience and Remote Sensing Symposium, Proceedings. IGARSS 2000., vol.Ā 7, pp. 2909ā2911, 2000.
- J.Ā Lee, āSpeckle analysis and smoothing of Synthetic Aperture Radar images,ā Computer graphics and image processing, vol.Ā 17, no.Ā 1, pp. 24ā32, 1981.
- R.Ā Radke, S.Ā Andra, O.Ā Al-Kofahi, and B.Ā Roysam, āImage change detection algorithms: a systematic survey,ā IEEE transactions on image processing, vol.Ā 14, no.Ā 3, pp. 294ā307, 2005.
- C.Ā Kervrann and J.Ā Boulanger, āOptimal spatial adaptation for patch-based image denoising,ā IEEE Transactions on Image Processing, vol.Ā 15, no.Ā 10, pp. 2866ā2878, 2006.
- P.Ā Riot, A.Ā Almansa, Y.Ā Gousseau, and F.Ā Tupin, āA correlation-based dissimilarity measure for noisy patches,ā in International Conference on Scale Space and Variational Methods in Computer Vision.Ā Ā Ā Springer, 2017, pp. 184ā195.
- L.Ā Gomez, M.Ā Buemi, J.Ā Jacobo-Berlles, and M.Ā Mejail, āA new image quality index for objectively evaluating despeckling filtering in SAR images,ā IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol.Ā 9, no.Ā 3, pp. 1297ā1307, 2016.
- K.Ā Dabov, A.Ā Foi, V.Ā Katkovnik, and K.Ā Egiazarian, āImage denoising by sparse 3-D transform-domain collaborative filtering,ā IEEE Transactions on image processing, vol.Ā 16, no.Ā 8, pp. 2080ā2095, 2007.
- C.Ā Deledalle, L.Ā Denis, and F.Ā Tupin, āHow to compare noisy patches? Patch similarity beyond Gaussian noise,ā International journal of computer vision, vol.Ā 99, no.Ā 1, pp. 86ā102, 2012.
- L.Ā Gomez, R.Ā Ospina, and A.Ā Frery, āUnassisted quantitative evaluation of despeckling filters,ā Remote Sensing, vol.Ā 9, no.Ā 4, p. 389, 2017.
- E.Ā Koeniguer, J.-M. Nicolas, B.Ā Pinel-Puyssegur, J.-M. Lagrange, and F.Ā Janez, āVisualisation des changements sur sĆ©ries temporelles radar: mĆ©thode REACTIV Ć©valuĆ©e Ć lāĆ©chelle mondiale sous Google Earth Engine,ā ConfĆ©rence FranƧaise de PhotogrammĆ©trie et de TĆ©lĆ©dĆ©tection (CFPT), 2018.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.