This thesis studies fluid flows estimation with particle filtering-based assimilation methods imaged using digital cameras. We rely on a specific particle filter, of which the proposal distribution is given by an Ensemble Kalman Filter, namely the Weighted Ensemble Kalman Filter. Two variations of this method are introduced and tested. The first consists in using a dynamical noise (which modelizes the model uncertainty and separates the particles from each others); its spatial form obeys to a power law stemming from the phenomenological theory of the turbulence. The second variation relies on a multiscale assimilation scheme introduicing successive refinements from observations at smaller and smaller scales. These two methods are tested on ...
International audienceThis paper presents a novel, efficient scheme for the analysis of Sea Surface ...
Cette thèse traite de l'utilisation de méthodes séquentielles et variationnelles de suivi pour des p...
International audienceThis paper proposes a novel multi-scale uid ow data as- similation approach, w...
This thesis studies fluid flows estimation with particle filtering-based assimilation methods imaged...
Cette thèse étudie des méthodes d'assimilation de données par filtrage particulaire à l'estimation d...
International audienceThis paper proposes a novel multi-scale fluid flow data assimilation approach,...
International audienceThis study proposes an extension of the Weighted Ensemble Kalman filter (WEnKF...
This thesis presents the use of sequential and variational methods for tracking applications in imag...
Reconstructing geophysical fields from noisy and partial remote sensing observations is a classical ...
In this paper, we propose a data assimilation method for consistently estimating the velocity fields...
International audienceIn this paper, we propose a data assimilation method for consistently estimati...
This study proposes an extension of the Weighted Ensemble Kalman filter (WEnKF) proposed by Papadaki...
The analysis and control of complex high-Reynolds-number flows of industrial and practical interest ...
International audienceIn this paper, two data assimilation methods based on sequential Monte Carlo s...
International audienceThis paper presents a novel, efficient scheme for the analysis of Sea Surface ...
Cette thèse traite de l'utilisation de méthodes séquentielles et variationnelles de suivi pour des p...
International audienceThis paper proposes a novel multi-scale uid ow data as- similation approach, w...
This thesis studies fluid flows estimation with particle filtering-based assimilation methods imaged...
Cette thèse étudie des méthodes d'assimilation de données par filtrage particulaire à l'estimation d...
International audienceThis paper proposes a novel multi-scale fluid flow data assimilation approach,...
International audienceThis study proposes an extension of the Weighted Ensemble Kalman filter (WEnKF...
This thesis presents the use of sequential and variational methods for tracking applications in imag...
Reconstructing geophysical fields from noisy and partial remote sensing observations is a classical ...
In this paper, we propose a data assimilation method for consistently estimating the velocity fields...
International audienceIn this paper, we propose a data assimilation method for consistently estimati...
This study proposes an extension of the Weighted Ensemble Kalman filter (WEnKF) proposed by Papadaki...
The analysis and control of complex high-Reynolds-number flows of industrial and practical interest ...
International audienceIn this paper, two data assimilation methods based on sequential Monte Carlo s...
International audienceThis paper presents a novel, efficient scheme for the analysis of Sea Surface ...
Cette thèse traite de l'utilisation de méthodes séquentielles et variationnelles de suivi pour des p...
International audienceThis paper proposes a novel multi-scale uid ow data as- similation approach, w...