Noisy data are often fitted using a smoothing parameter, controlling the importance of two objectives that are opposite to a certain extent. One of these two is smoothness and the other is closeness to the input data. The optimal value of this paramater minimizes the error of the result (as compared to the unknown, exact data), usually expressed in the L2 norm. This optimum cannot be found exactly, simply because the exact data are unknown. In spline theory, the generalized cross validation (GCV) technique has proved to be an effective (though rather slow) statistical way for estimating this optimum. On the other hand, wavelet theory is well suited for signal and image processing. This paper investigates the possibility of using GCV in a no...
This paper investigates two types of results that support the use of Generalized Cross Validation (G...
Generalized cross-validation (GCV) is a popular parameter selection criterion for spline smoothing o...
This paper discusses wavelet thresholding in smoothing from non-equispaced, noisy data in one dimens...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
De-noising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and k...
De-noising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and k...
Denoising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and ke...
De-noising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and k...
Coefficient thresholding is a popular method in wavelet based noise reduction. A wavelet decompositi...
This paper is about using wavelets for regression. The main aim of the paper is to introduce and dev...
In wavelet regression, choosing threshold value is a crucial issue. A too large value cuts too many ...
This paper investigates two types of results that support the use of Generalized Cross Validation (G...
Generalized cross-validation (GCV) is a popular parameter selection criterion for spline smoothing o...
This paper discusses wavelet thresholding in smoothing from non-equispaced, noisy data in one dimens...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
De-noising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and k...
De-noising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and k...
Denoising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and ke...
De-noising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and k...
Coefficient thresholding is a popular method in wavelet based noise reduction. A wavelet decompositi...
This paper is about using wavelets for regression. The main aim of the paper is to introduce and dev...
In wavelet regression, choosing threshold value is a crucial issue. A too large value cuts too many ...
This paper investigates two types of results that support the use of Generalized Cross Validation (G...
Generalized cross-validation (GCV) is a popular parameter selection criterion for spline smoothing o...
This paper discusses wavelet thresholding in smoothing from non-equispaced, noisy data in one dimens...