AbstractDonoho and Johnstone introduced an adaptive algorithm that extends nonlinear thresholding denoising in a fixed orthonormal basis to a multiple basis setting. In their work, a search for an optimal basis from a large collection of orthonormal bases – i.e., a library – is introduced. That technique gives the so-called best ortho-basis estimate. In this paper we study the situation when many such libraries are available. We propose an algorithm that exploits the availability of many best ortho-basis approximations. The algorithm uses a strengthening of the convexity of the L2 norm to produce an estimate which is an average of best ortho-basis estimates. Conditions under which the proposed algorithm offers improvements and corresponding...
AbstractIn this paper, we study a method for the construction of orthonormal wavelet bases with dila...
In the context of wavelet denoising and compression, we study minimum description length (MDL) crite...
Conference PaperWavelet-based image denoising algorithm depends upon the energy compaction property ...
AbstractDonoho and Johnstone introduced an adaptive algorithm that extends nonlinear thresholding de...
We propose a best basis algorithm for signal enhancement in white Gaussian noise. The best basis sea...
An algorithm for the construction of optimal compactly supported N-tap orthonormal wavelet for signa...
The problem of signal denoising using an orthog-onal basis is considered. The framework of previ-ous...
AbstractNonlinear thresholding of wavelet coefficients is an efficient method for denoising signals ...
Abstract. Donoho and Johnstone introduced an algorithm and supporting inequality that allows the sel...
Cover title.Includes bibliographical references (p. 30-31).Supported by ARPA. F30602-92-C-0030 Suppo...
A two stage algorithm is presented in this paper to design optimal M-band orthonormal wavelets of co...
Density estimation is a commonly used test case for non-parametric estimation methods. We explore th...
Abstractthe main idea of denoising algorithm based on wavelet adaptive threshold is that speech sign...
Thresholding algorithms in an orthonormal basis are studied to estimate noisy discrete signals degra...
We present an iterative deconvolution algorithm that minimizes a functional with a non-quadratic wav...
AbstractIn this paper, we study a method for the construction of orthonormal wavelet bases with dila...
In the context of wavelet denoising and compression, we study minimum description length (MDL) crite...
Conference PaperWavelet-based image denoising algorithm depends upon the energy compaction property ...
AbstractDonoho and Johnstone introduced an adaptive algorithm that extends nonlinear thresholding de...
We propose a best basis algorithm for signal enhancement in white Gaussian noise. The best basis sea...
An algorithm for the construction of optimal compactly supported N-tap orthonormal wavelet for signa...
The problem of signal denoising using an orthog-onal basis is considered. The framework of previ-ous...
AbstractNonlinear thresholding of wavelet coefficients is an efficient method for denoising signals ...
Abstract. Donoho and Johnstone introduced an algorithm and supporting inequality that allows the sel...
Cover title.Includes bibliographical references (p. 30-31).Supported by ARPA. F30602-92-C-0030 Suppo...
A two stage algorithm is presented in this paper to design optimal M-band orthonormal wavelets of co...
Density estimation is a commonly used test case for non-parametric estimation methods. We explore th...
Abstractthe main idea of denoising algorithm based on wavelet adaptive threshold is that speech sign...
Thresholding algorithms in an orthonormal basis are studied to estimate noisy discrete signals degra...
We present an iterative deconvolution algorithm that minimizes a functional with a non-quadratic wav...
AbstractIn this paper, we study a method for the construction of orthonormal wavelet bases with dila...
In the context of wavelet denoising and compression, we study minimum description length (MDL) crite...
Conference PaperWavelet-based image denoising algorithm depends upon the energy compaction property ...