The complex wavelet transform (CWT) is a
complex-valued
In mathematics, a complex number is an element of a number system that extends the real numbers with a specific element denoted , called the imaginary unit and satisfying the equation i^= -1; every complex number can be expressed in the form ...
extension to the standard
discrete wavelet transform
In numerical analysis and functional analysis, a discrete wavelet transform (DWT) is any wavelet transform for which the wavelets are discretely sampled. As with other wavelet transforms, a key advantage it has over Fourier transforms is temporal ...
(DWT). It is a two-dimensional
wavelet transform which provides
multiresolution, sparse representation, and useful characterization of the structure of an image. Further, it purveys a high degree of shift-invariance in its magnitude, which was investigated in. However, a drawback to this transform is that it exhibits
(where
is the dimension of the signal being transformed) redundancy compared to a separable (DWT).
The use of complex wavelets in image processing was originally set up in 1995 by J.M. Lina and L. Gagno
in the framework of the Daubechies orthogonal filters bank
It was then generalized in 1997 by
Nick Kingsbury, Prof. Nick Kingsbury[
]
of
Cambridge University
, mottoeng = Literal: From here, light and sacred draughts.
Non literal: From this place, we gain enlightenment and precious knowledge.
, established =
, other_name = The Chancellor, Masters and Schola ...
.
In the area of computer vision, by exploiting the concept of visual contexts, one can quickly focus on candidate regions, where objects of interest may be found, and then compute additional features through the CWT for those regions only. These additional features, while not necessary for global regions, are useful in accurate detection and recognition of smaller objects. Similarly, the CWT may be applied to detect the activated voxels of cortex and additionally the
temporal independent component analysis
In signal processing, independent component analysis (ICA) is a computational method for separating a multivariate signal into additive subcomponents. This is done by assuming that at most one subcomponent is Gaussian and that the subcomponents ar ...
(tICA) may be utilized to extract the underlying independent sources whose number is determined by Bayesian information criterio
Dual-tree complex wavelet transform
The Dual-tree complex wavelet transform (DTCWT) calculates the complex transform of a signal using two separate DWT decompositions (tree ''a'' and tree ''b''). If the filters used in one are specifically designed different from those in the other it is possible for one DWT to produce the real coefficients and the other the imaginary.
This redundancy of two provides extra information for analysis but at the expense of extra computational power. It also provides approximate
Shift-invariant system, shift-invariance (unlike the DWT) yet still allows perfect reconstruction of the signal.
The design of the filters is particularly important for the transform to occur correctly and the necessary characteristics are:
* The
low-pass filters in the two trees must differ by half a sample period
* Reconstruction filters are the reverse of analysis
* All filters from the same orthonormal set
* Tree ''a'' filters are the reverse of tree ''b'' filters
* Both trees have the same frequency response
See also
*
Wavelet series
In mathematics, a wavelet series is a representation of a square-integrable (real- or complex-valued) function by a certain orthonormal series generated by a wavelet. This article provides a formal, mathematical definition of an orthonormal wavel ...
*
Continuous wavelet transform
References
{{reflist
External links
An MPhil thesis: Complex wavelet transforms and their applicationsCWT for EMG analysisA paper on DTCWTAnother full paper3-D DT MRI data visualizationMultidimensional, mapping-based complex wavelet transforms Image Analysis Using a Dual-Tree -band Wavelet Transform (2006), preprint, Caroline Chaux, Laurent Duval, Jean-Christophe Pesquet Noise covariance properties in dual-tree wavelet decompositions (2007), preprint, Caroline Chaux, Laurent Duval, Jean-Christophe PesquetA nonlinear Stein based estimator for multichannel image denoising (2007), preprint, Caroline Chaux, Laurent Duval, Amel Benazza-Benyahia, Jean-Christophe PesquetCaroline Chaux website (-band dual-tree wavelets)*
ttp://www.ece.msstate.edu/~fowler/ James E. Fowler (dual-tree wavelets for video and hyperspectral image compression)Nick Kingsbury website (dual-tree wavelets)Jean-Christophe Pesquet website (-band dual-tree wavelets)Ivan Selesnick (dual-tree wavelets)
Wavelets