Caroline Chaux
Aix-Marseille University
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Publication
Featured researches published by Caroline Chaux.
Inverse Problems | 2007
Caroline Chaux; Patrick L. Combettes; Jean-Christophe Pesquet; Valérie R. Wajs
A convex variational framework is proposed for solving inverse problems in Hilbert spaces with a priori information on the representation of the target solution in a frame. The objective function to be minimized consists of a separable term penalizing each frame coefficient individually, and a smooth term modelling the data formation model as well as other constraints. Sparsity-constrained and Bayesian formulations are examined as special cases. A splitting algorithm is presented to solve this problem and its convergence is established in infinite-dimensional spaces under mild conditions on the penalization functions, which need not be differentiable. Numerical simulations demonstrate applications to frame-based image restoration.
IEEE Transactions on Image Processing | 2006
Caroline Chaux; Laurent Duval; Jean-Christophe Pesquet
We propose a two-dimensional generalization to the M-band case of the dual-tree decomposition structure (initially proposed by Kingsbury and further investigated by Selesnick) based on a Hilbert pair of wavelets. We particularly address: 1) the construction of the dual basis and 2) the resulting directional analysis. We also revisit the necessary pre-processing stage in the M-band case. While several reconstructions are possible because of the redundancy of the representation, we propose a new optimal signal reconstruction technique, which minimizes potential estimation errors. The effectiveness of the proposed M-band decomposition is demonstrated via denoising comparisons on several image types (natural, texture, seismics), with various M-band wavelets and thresholding strategies. Significant improvements in terms of both overall noise reduction and direction preservation are observed.
IEEE Transactions on Image Processing | 2011
Nelly Pustelnik; Caroline Chaux; Jean-Christophe Pesquet
Regularization approaches have demonstrated their effectiveness for solving ill-posed problems. However, in the context of variational restoration methods, a challenging question remains, namely how to find a good regularizer. While total variation introduces staircase effects, wavelet-domain regularization brings other artefacts, e.g., ringing. However, a tradeoff can be made by introducing a hybrid regularization including several terms not necessarily acting in the same domain (e.g., spatial and wavelet transform domains). While this approach was shown to provide good results for solving deconvolution problems in the presence of additive Gaussian noise, an important issue is to efficiently deal with this hybrid regularization for more general noise models. To solve this problem, we adopt a convex optimization framework where the criterion to be minimized is split in the sum of more than two terms. For spatial domain regularization, isotropic or anisotropic total variation definitions using various gradient filters are considered. An accelerated version of the Parallel Proximal Algorithm is proposed to perform the minimization. Some difficulties in the computation of the proximity operators involved in this algorithm are also addressed in this paper. Numerical experiments performed in the context of Poisson data recovery, show the good behavior of the algorithm as well as promising results concerning the use of hybrid regularization techniques.
Siam Journal on Imaging Sciences | 2009
Caroline Chaux; Jean-Christophe Pesquet; Nelly Pustelnik
The objective of this paper is to develop methods for solving image recovery problems subject to constraints on the solution. More precisely, we will be interested in problems which can be formulated as the minimization over a closed convex constraint set of the sum of two convex functions
IEEE Transactions on Signal Processing | 2008
Caroline Chaux; Laurent Duval; Amel Benazza-Benyahia; Jean-Christophe Pesquet
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Signal Processing | 2011
Laurent Jacques; Laurent Duval; Caroline Chaux; Gabriel Peyré
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IEEE Transactions on Signal Processing | 2009
Jean-Christophe Pesquet; Amel Benazza-Benyahia; Caroline Chaux
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IEEE Transactions on Information Theory | 2007
Caroline Chaux; Jean-Christophe Pesquet; Laurent Duval
, where
Proceedings of SPIE | 2007
Caroline Chaux; Laure Blanc-Féraud; Josiane Zerubia
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IEEE Transactions on Signal Processing | 2014
Mai Quyen Pham; Laurent Duval; Caroline Chaux; Jean-Christophe Pesquet
may be nonsmooth and