A B-wavelet-based noise-reduction algorithm.pdf
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IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 44, NO. 5, MAY 1996 1219
approximation of S1/4(e3”) (one obvious way of doing this is by
autoregresive (AR) modeling of S1/4(eJW)). If S(eJa) = 0 on
some interval, it can be shown that both pre and postfilters can be
chosen to be zero on the same interval, so that there are no stability
problems. The AR modeling approach not only insures stability of
the pre and postfilters, but it also offers a computationally very
efficient way of obtaining rational approximations of optimal pre and
postfilters. In order to obtain a minimum phase stable approximation
of S- ’ /4(eJ”) , all we have to do is compute ,,/m (using the fast
Fourier transform, for example), and then use Levinson’s recursion
to find a polynomial approximation of S-1/4(eJ”).
In. EXAMPLES
Example 3.1-DCT Filter Bank with Prejiltering: The above de-
veloped technique will be applied to a very simple PU FB. Let
{P~(z) Q k ( z ) } be a DCT FB, i.e., the one in which the polyphase
matrix E(z) is the DCT IV matrix [Il l . The DCT filters have poor
attenuations. Fig. 3 shows [ l /S(e3w)]1/4, the test function chosen
for this example (dotted curve). The solid curve is its second-order
rational approximation (i.e., Pa ( z ) is a second-order filter). The
input PSD function S ( e J w ) was the lowpass AR(5) model of speech
[7]. Fig. 4 shows the coding gain for different FB’s. We can see
that even prefilter alone (without any FB) gives some coding gain
(see [7], Ch. 7). The coding gain changes only slightly if the ideal
prefilter [l/S( eJw) ]1 ’4 is approximated by a second-order rational
filter. Notice that the coding gain of PPU FB approximately halves
the gap (on a dB scale) between the coding gain achieved with the
PU FB and the prediction gain bound on the coding gain given by
(2.15). The next example is striking in the sense that a finite-order
FB performs better than a brick-wall FB.
Example 3.2-Tree-Structured Filter Bank with P
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