Keywords: filtering, additive noise, peak signal/noise ratio speckle.
@article{DANMA_2020_494_a16,
author = {V. F. Kravchenko and V. I. Ponomarev and V. I. Pustovoǐt and A. Palacios-Enriquez},
title = {3D filtering of images corrupted by additive-multiplicative noise},
journal = {Doklady Rossijskoj akademii nauk. Matematika, informatika, processy upravleni\^a},
pages = {71--75},
year = {2020},
volume = {494},
language = {ru},
url = {http://geodesic.mathdoc.fr/item/DANMA_2020_494_a16/}
}
TY - JOUR AU - V. F. Kravchenko AU - V. I. Ponomarev AU - V. I. Pustovoǐt AU - A. Palacios-Enriquez TI - 3D filtering of images corrupted by additive-multiplicative noise JO - Doklady Rossijskoj akademii nauk. Matematika, informatika, processy upravleniâ PY - 2020 SP - 71 EP - 75 VL - 494 UR - http://geodesic.mathdoc.fr/item/DANMA_2020_494_a16/ LA - ru ID - DANMA_2020_494_a16 ER -
%0 Journal Article %A V. F. Kravchenko %A V. I. Ponomarev %A V. I. Pustovoǐt %A A. Palacios-Enriquez %T 3D filtering of images corrupted by additive-multiplicative noise %J Doklady Rossijskoj akademii nauk. Matematika, informatika, processy upravleniâ %D 2020 %P 71-75 %V 494 %U http://geodesic.mathdoc.fr/item/DANMA_2020_494_a16/ %G ru %F DANMA_2020_494_a16
V. F. Kravchenko; V. I. Ponomarev; V. I. Pustovoǐt; A. Palacios-Enriquez. 3D filtering of images corrupted by additive-multiplicative noise. Doklady Rossijskoj akademii nauk. Matematika, informatika, processy upravleniâ, Tome 494 (2020), pp. 71-75. http://geodesic.mathdoc.fr/item/DANMA_2020_494_a16/
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