In the field of signal processing, one of the underlying enemies in obtaining a good quality signal is noise. The most common examples of signals that can be corrupted by noise are images and audio signals. Since the early 1980\u27s, a time when wavelet transformations became a modernly defined tool, statistical techniques have been incorporated into processes that use wavelets with the goal of maximizing signal-to-noise ratios. We provide a brief history of wavelet theory, going back to Alfréd Haar\u27s 1909 dissertation on orthogonal functions, as well as its important relationship to the earlier work of Joseph Fourier (circa 1801), which brought about that famous mathematical transformation, the Fourier series. We demonstrate how wavelet...
This book presents the basic concepts of functional analysis, wavelet analysis and thresholding. It ...
A data adaptive scheme for selecting thresholds for wavelet shrinkage-based noise removal is develop...
International audienceWavelet transforms are said to be sparse in that they represent smooth andpiec...
In the field of signal processing, one of the underlying enemies in obtaining a good quality signal ...
In the field of signal processing, one of the underlying enemies in obtaining a good quality signal ...
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 ...
Conference PaperWavelet shrinkage is a signal estimation technique that exploits the remarkable abil...
This overview article motivates the use of wavelets in statistics, and introduces the basic mathemat...
This overview article motivates the use of wavelets in statistics, and introduces the basic mathemat...
Wavelet theory is a relatively new tool for signal analysis. Although the rst wavelet was derived by...
Wavelet theory is a relatively new tool for signal analysis. Although the rst wavelet was derived by...
Wavelet theory is a relatively new tool for signal analysis. Although the rst wavelet was derived by...
Wavelet theory is a relatively new tool for signal analysis. Although the rst wavelet was derived by...
A data adaptive scheme for selecting thresholds for wavelet shrinkage-based noise removal is develop...
This book presents the basic concepts of functional analysis, wavelet analysis and thresholding. It ...
A data adaptive scheme for selecting thresholds for wavelet shrinkage-based noise removal is develop...
International audienceWavelet transforms are said to be sparse in that they represent smooth andpiec...
In the field of signal processing, one of the underlying enemies in obtaining a good quality signal ...
In the field of signal processing, one of the underlying enemies in obtaining a good quality signal ...
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 ...
Conference PaperWavelet shrinkage is a signal estimation technique that exploits the remarkable abil...
This overview article motivates the use of wavelets in statistics, and introduces the basic mathemat...
This overview article motivates the use of wavelets in statistics, and introduces the basic mathemat...
Wavelet theory is a relatively new tool for signal analysis. Although the rst wavelet was derived by...
Wavelet theory is a relatively new tool for signal analysis. Although the rst wavelet was derived by...
Wavelet theory is a relatively new tool for signal analysis. Although the rst wavelet was derived by...
Wavelet theory is a relatively new tool for signal analysis. Although the rst wavelet was derived by...
A data adaptive scheme for selecting thresholds for wavelet shrinkage-based noise removal is develop...
This book presents the basic concepts of functional analysis, wavelet analysis and thresholding. It ...
A data adaptive scheme for selecting thresholds for wavelet shrinkage-based noise removal is develop...
International audienceWavelet transforms are said to be sparse in that they represent smooth andpiec...