This paper examines the relationship between wavelet-based image processing algorithms and variational problems. Algorithms are derived as exact or approximate minimizers of variational problems; in particular, we show that wavelet shrinkage can be considered the exact minimizer of the following problem: given an image F defined on a square I, minimize over all g in the Besov space B 1 (L1 (I)) the functional + ##g# B 1 (L 1 (I)) . We use the theory of nonlinear wavelet image compression in L2 (I) to derive accurate error bounds for noise removal through wavelet shrinkage applied to images corrupted with i.i.d., mean zero, Gaussian noise. A new signal-tonoise ratio, which we claim more accurately reflects the visual perception of noi...
Abstract. We develop and analyze wavelet based adaptive schemes for nonlinear variational problems. ...
Nonlinear diffusion, proposed by Perona and Malik, is a well-known method for image denoising with e...
We address the denoising of images contaminated with multiplicative noise, e.g. speckle noise. Class...
This paper examines the relationship between wavelet-based image processing algorithms and variation...
Finding a sparse representation of a possibly noisy signal can be modeled as a variational minimizat...
This thesis is a contribution to the field equivalences of different methods of mathematical image ...
This thesis is a contribution to the field "equivalences of different methods of mathematical image ...
Among image restoration literature, there are mainly two kinds of approach. One is based on a proces...
Abstract. We study the connections between discrete one-dimensional schemes for nonlinear diusion an...
AbstractWe propose methods of both slow and rapid post-processing of signals for erasure of artifact...
Finding a sparse representation of a possibly noisy signal is a common problem in signal representa...
A common problem in image processing is to decompose an observed image f into a sum u + v , where u ...
In this paper, we introduce a novel hybrid variational model which generalizes the classical total v...
In the field of signal processing, one of the underlying enemies in obtaining a good quality signal ...
In this paper a wavelet based model for image de-noising is presented. Wavelet coefficients are mode...
Abstract. We develop and analyze wavelet based adaptive schemes for nonlinear variational problems. ...
Nonlinear diffusion, proposed by Perona and Malik, is a well-known method for image denoising with e...
We address the denoising of images contaminated with multiplicative noise, e.g. speckle noise. Class...
This paper examines the relationship between wavelet-based image processing algorithms and variation...
Finding a sparse representation of a possibly noisy signal can be modeled as a variational minimizat...
This thesis is a contribution to the field equivalences of different methods of mathematical image ...
This thesis is a contribution to the field "equivalences of different methods of mathematical image ...
Among image restoration literature, there are mainly two kinds of approach. One is based on a proces...
Abstract. We study the connections between discrete one-dimensional schemes for nonlinear diusion an...
AbstractWe propose methods of both slow and rapid post-processing of signals for erasure of artifact...
Finding a sparse representation of a possibly noisy signal is a common problem in signal representa...
A common problem in image processing is to decompose an observed image f into a sum u + v , where u ...
In this paper, we introduce a novel hybrid variational model which generalizes the classical total v...
In the field of signal processing, one of the underlying enemies in obtaining a good quality signal ...
In this paper a wavelet based model for image de-noising is presented. Wavelet coefficients are mode...
Abstract. We develop and analyze wavelet based adaptive schemes for nonlinear variational problems. ...
Nonlinear diffusion, proposed by Perona and Malik, is a well-known method for image denoising with e...
We address the denoising of images contaminated with multiplicative noise, e.g. speckle noise. Class...