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Say that the DWT for a particular choice of wavelet yields an efficient representation of a particular signal class. Inother words, signals in the class are well-described using a few large transform coefficients.

Now consider unstructured noise , which cannot be eifficiently represented by any transform, includingthe DWT. Due to the orthogonality of the DWT, such noise sequences make, on average, equal contributions to alltransform coefficients. Any given noise sequence is expected to yield many small-valued transform coefficients.

Together, these two ideas suggest a means of de-noising a signal. Say that we perform a DWT on a signal from our well-matched signal class that has been corrupted by additive noise. We expect thatlarge transform coefficients are composed mostly of signal content, while small transform coefficients should be composedmostly of noise content. Hence, throwing away the transform coefficients whose magnitude is less than some small thresholdshould improve the signal-to-noise ratio. The de-noising procedure is illustrated in .

Now we give an example of denoising a step-like waveform using the Haar DWT. In , the top right subplot shows the noisy signal and the top left shows itDWT coefficients. Note the presence of a few large DWT coefficients, expected to contain mostly signal components, aswell as the presence of many small-valued coefficients, expected to contain noise. (The bottom left subplot shows theDWT for the original signal before any noise was added, which confirms that all signal energy is contained within a fewlarge coefficients.) If we throw away all DWT coefficients whose magnitude is less than 0.1, we are left with only thelarge coefficients (shown in the middle left plot) which correspond to the de-noised time-domain signal shown in themiddle right plot. The difference between the de-noised signal and the original noiseless signal is shown in the bottom right. Non-zero error results from noise contributions to the large coefficients; there isno way of distinguishing these noise components from signal components.

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Source:  OpenStax, Digital signal processing (ohio state ee700). OpenStax CNX. Jan 22, 2004 Download for free at http://cnx.org/content/col10144/1.8
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