The identification of texture changes is a challenging problem that can be addressed by considering local regularity fluctuations in an image. This work develops a procedure for local regularity estimation that combines a convex optimization strategy with wavelet leaders, specific wavelet coefficients recently introduced in the context of multifractal analysis. The proposed procedure is formulated as an inverse problem that combines the joint estimation of both local regularity exponent and of the optimal weights underlying regularity measurement. Numerical experiments using synthetic texture indicate that the performance of the proposed approach compares favorably against other wavelet based local regularity estimation formulations. The me...
Journal PaperIn this paper we develop a wavelet-based statistical method for solving linear inverse ...
International audienceThe aim of this paper is to highlight the relevance in computer vision of the ...
submittedWe propose a denoising method that has the property of preserving local regularity, in the ...
International audienceThe identification of texture changes is a challenging problem that can be add...
Texture segmentation constitutes a classical yet crucial task in image processing. In many applicati...
Texture segmentation constitutes a standard image processing task, crucial for many applications. Th...
We consider the problem of image restoration/reconstruction where the acquisition system is modeled ...
This work aims to segment a texture into different regions, each characterized by a priori unknown m...
International audienceMultifractal analysis aims to characterize signals, functions, images or field...
In this paper we are interested in regularizing hyperparameter estimation by maximum likelihood in ...
This article proposes a new framework to regularize imaging linear inverse problems using an adaptiv...
Multifractal analysis is considered a promising tool for image processing, notably for texture chara...
International audienceThis article proposes a new framework to regularize imaging lin- ear inverse p...
In this paper, we propose the use of complexity regularization in image restoration. This is a flexi...
Journal PaperIn this paper we develop a wavelet-based statistical method for solving linear inverse ...
International audienceThe aim of this paper is to highlight the relevance in computer vision of the ...
submittedWe propose a denoising method that has the property of preserving local regularity, in the ...
International audienceThe identification of texture changes is a challenging problem that can be add...
Texture segmentation constitutes a classical yet crucial task in image processing. In many applicati...
Texture segmentation constitutes a standard image processing task, crucial for many applications. Th...
We consider the problem of image restoration/reconstruction where the acquisition system is modeled ...
This work aims to segment a texture into different regions, each characterized by a priori unknown m...
International audienceMultifractal analysis aims to characterize signals, functions, images or field...
In this paper we are interested in regularizing hyperparameter estimation by maximum likelihood in ...
This article proposes a new framework to regularize imaging linear inverse problems using an adaptiv...
Multifractal analysis is considered a promising tool for image processing, notably for texture chara...
International audienceThis article proposes a new framework to regularize imaging lin- ear inverse p...
In this paper, we propose the use of complexity regularization in image restoration. This is a flexi...
Journal PaperIn this paper we develop a wavelet-based statistical method for solving linear inverse ...
International audienceThe aim of this paper is to highlight the relevance in computer vision of the ...
submittedWe propose a denoising method that has the property of preserving local regularity, in the ...