Many wavelet shrinkage methods assume that the data are observed on an equally spaced grid of length of the form 2(J) for some J. These methods require serious modification or preprocessed data to cope with irregularly spaced data. The lifting scheme is a recent mathematical innovation that obtains a multiscale analysis for irregularly spaced data. A key lifting component is the "predict" step where a prediction of a data point is made. The residual from the prediction is stored and can be thought of as a wavelet coefficient. This article exploits the flexibility of lifting by adaptively choosing the kind of prediction according to a criterion. In this way the smoothness of the underlying 'wavelet' can be adapted to the local properties of ...
Conference PaperWe introduce and discuss biorthogonal wavelet transforms using the lifting construct...
This paper puts forward a new multiscale decomposition. This can be applied to nonparametric regress...
Vita.Two research areas that have generated a great deal of interest in the field of statistics are ...
Many wavelet shrinkage methods assume that the data are observed on an equally spaced grid of length...
We treat bivariate nonparametric regression, where the design of experiment can be arbitrarily irreg...
Journal PaperThis paper develops new algorithms for adapted multiscale analysis and signal adaptive ...
This paper discusses wavelet thresholding in smoothing from non-equispaced, noisy data in one dimens...
In the setting of nonparametric stochastic regression, we introduce a new way to build smooth design...
Standard wavelet shrinkage procedures for nonparametric regression are restricted to equispaced samp...
textabstractAdaptive wavelet decompositions appear useful in various applications in image and video...
This paper develops two new adaptive wavelet transforms based on the lifting scheme. The lifting con...
We treat bivariate nonparametric regression, where the design of experiment can be arbitrarily irre...
This paper discusses wavelet thresholding in smoothing from non-equispaced, noisy data in one dimens...
Conference paperSummary form only given. Image compression relies on efficient representations of im...
This paper discusses wavelet thresholding in smoothing from non-equispaced, noisy data in one dimens...
Conference PaperWe introduce and discuss biorthogonal wavelet transforms using the lifting construct...
This paper puts forward a new multiscale decomposition. This can be applied to nonparametric regress...
Vita.Two research areas that have generated a great deal of interest in the field of statistics are ...
Many wavelet shrinkage methods assume that the data are observed on an equally spaced grid of length...
We treat bivariate nonparametric regression, where the design of experiment can be arbitrarily irreg...
Journal PaperThis paper develops new algorithms for adapted multiscale analysis and signal adaptive ...
This paper discusses wavelet thresholding in smoothing from non-equispaced, noisy data in one dimens...
In the setting of nonparametric stochastic regression, we introduce a new way to build smooth design...
Standard wavelet shrinkage procedures for nonparametric regression are restricted to equispaced samp...
textabstractAdaptive wavelet decompositions appear useful in various applications in image and video...
This paper develops two new adaptive wavelet transforms based on the lifting scheme. The lifting con...
We treat bivariate nonparametric regression, where the design of experiment can be arbitrarily irre...
This paper discusses wavelet thresholding in smoothing from non-equispaced, noisy data in one dimens...
Conference paperSummary form only given. Image compression relies on efficient representations of im...
This paper discusses wavelet thresholding in smoothing from non-equispaced, noisy data in one dimens...
Conference PaperWe introduce and discuss biorthogonal wavelet transforms using the lifting construct...
This paper puts forward a new multiscale decomposition. This can be applied to nonparametric regress...
Vita.Two research areas that have generated a great deal of interest in the field of statistics are ...