Bayesian estimation of turbulent motion
Based on physical laws describing the multiscale structure of turbulent flows, this paper proposes a regularizer for fluid motion estimation from an image sequence. Regularization is achieved by imposing some scale invariance property between histograms of motion increments computed at different sca...
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Acceso en línea: | http://hdl.handle.net/20.500.12110/paper_01628828_v35_n6_p1343_Heas |
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todo:paper_01628828_v35_n6_p1343_Heas2023-10-03T15:01:36Z Bayesian estimation of turbulent motion Heás, P. Herzet, C. Meḿin, E. Heitz, D. Mininni, P.D. Bayesian model selection Constrained optimization Optic flow Robust estimation Turbulence Bayesian model selection Bayesian perspective Fluid flow estimation Fluid motion estimation Multi-scale structures Optic flow Robust estimation Scale-invariance property Bayesian networks Computer vision Constrained optimization Estimation Flow of fluids Turbulence Models Based on physical laws describing the multiscale structure of turbulent flows, this paper proposes a regularizer for fluid motion estimation from an image sequence. Regularization is achieved by imposing some scale invariance property between histograms of motion increments computed at different scales. By reformulating this problem from a Bayesian perspective, an algorithm is proposed to jointly estimate motion, regularization hyperparameters, and to select the most likely physical prior among a set of models. Hyperparameter and model inference are conducted by posterior maximization, obtained by marginalizing out non-Gaussian motion variables. The Bayesian estimator is assessed on several image sequences depicting synthetic and real turbulent fluid flows. Results obtained with the proposed approach exceed the state-of-the-art results in fluid flow estimation. © 2013 IEEE. Fil:Mininni, P.D. Universidad de Buenos Aires. Facultad de Ciencias Exactas y Naturales; Argentina. JOUR info:eu-repo/semantics/openAccess http://creativecommons.org/licenses/by/2.5/ar http://hdl.handle.net/20.500.12110/paper_01628828_v35_n6_p1343_Heas |
institution |
Universidad de Buenos Aires |
institution_str |
I-28 |
repository_str |
R-134 |
collection |
Biblioteca Digital - Facultad de Ciencias Exactas y Naturales (UBA) |
topic |
Bayesian model selection Constrained optimization Optic flow Robust estimation Turbulence Bayesian model selection Bayesian perspective Fluid flow estimation Fluid motion estimation Multi-scale structures Optic flow Robust estimation Scale-invariance property Bayesian networks Computer vision Constrained optimization Estimation Flow of fluids Turbulence Models |
spellingShingle |
Bayesian model selection Constrained optimization Optic flow Robust estimation Turbulence Bayesian model selection Bayesian perspective Fluid flow estimation Fluid motion estimation Multi-scale structures Optic flow Robust estimation Scale-invariance property Bayesian networks Computer vision Constrained optimization Estimation Flow of fluids Turbulence Models Heás, P. Herzet, C. Meḿin, E. Heitz, D. Mininni, P.D. Bayesian estimation of turbulent motion |
topic_facet |
Bayesian model selection Constrained optimization Optic flow Robust estimation Turbulence Bayesian model selection Bayesian perspective Fluid flow estimation Fluid motion estimation Multi-scale structures Optic flow Robust estimation Scale-invariance property Bayesian networks Computer vision Constrained optimization Estimation Flow of fluids Turbulence Models |
description |
Based on physical laws describing the multiscale structure of turbulent flows, this paper proposes a regularizer for fluid motion estimation from an image sequence. Regularization is achieved by imposing some scale invariance property between histograms of motion increments computed at different scales. By reformulating this problem from a Bayesian perspective, an algorithm is proposed to jointly estimate motion, regularization hyperparameters, and to select the most likely physical prior among a set of models. Hyperparameter and model inference are conducted by posterior maximization, obtained by marginalizing out non-Gaussian motion variables. The Bayesian estimator is assessed on several image sequences depicting synthetic and real turbulent fluid flows. Results obtained with the proposed approach exceed the state-of-the-art results in fluid flow estimation. © 2013 IEEE. |
format |
JOUR |
author |
Heás, P. Herzet, C. Meḿin, E. Heitz, D. Mininni, P.D. |
author_facet |
Heás, P. Herzet, C. Meḿin, E. Heitz, D. Mininni, P.D. |
author_sort |
Heás, P. |
title |
Bayesian estimation of turbulent motion |
title_short |
Bayesian estimation of turbulent motion |
title_full |
Bayesian estimation of turbulent motion |
title_fullStr |
Bayesian estimation of turbulent motion |
title_full_unstemmed |
Bayesian estimation of turbulent motion |
title_sort |
bayesian estimation of turbulent motion |
url |
http://hdl.handle.net/20.500.12110/paper_01628828_v35_n6_p1343_Heas |
work_keys_str_mv |
AT heasp bayesianestimationofturbulentmotion AT herzetc bayesianestimationofturbulentmotion AT memine bayesianestimationofturbulentmotion AT heitzd bayesianestimationofturbulentmotion AT mininnipd bayesianestimationofturbulentmotion |
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1807314654869848064 |