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The properties and hence advantages of a familiy of wavelets depend upon the mother wavelet features. However, a common set of features are shared by the most useful of them citep( ).
If is an empirically recorded signal with and underlying description, , a model for the noise addition process transforming g(t) into y(t) is described by Equation .
where are independent normal random variables and represents the intensity of the noise in . Using this model, it follows that the objective of noise removal is, given a finite set of values, reconstruct the original signal without assuming a particular structure for the signal.
The usual approach to noise removal models noise as a high frequency signal added to an original signal. Fourier transform could be used to track this high frequency, ultimately removing it by adequate filtering. This noise removalstrategy is conceptually clear and efficient since depends only on calculating the DFT of a given signal. However, there are some issues that must be taken into account. The most prominent of such issues ocurrs when the original signal hasimportant information associated to the same frequency as the noise. When a frequency domain representation of the signal is obtained, filtering out this frequency will induce noticeable loss of information of the target signal.
In cases as the one described, the wavelets approach is more appropiated due to the fact that the signal will be studied using a “dual” frequency-time representation, which allows separating noise frequencies from valuable signalfrequencies. Under this approach, noise will be represented as a consistent high frequency signal in the entire time scope and so its identification will be easier than using Fourier analysis.
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