how to use wavelet to deal with complex signal
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when I use wavelet to deal with complex signal (20000*1), I get a matrix named cfs (137*20000*2) which has the third dimension.
what is the third dimension mean? the different between cfs(:,:,1) and cfs(:,:,2) is?
why the first dimension is 137?
signal = randn(20000,1)+ 1i*randn(20000,1);
data_length = length(signal);
Fs =1000;
fb = cwtfilterbank('SignalLength',data_length, ...
'SamplingFrequency',Fs,...
'VoicesPerOctave',12);
[cfs,frq] = wt(fb,signal.');
figure;
t = (1:1:data_length)*1/Fs;
pcolor(t,frq,abs(cfs(:,:,1)));
set(gca,"yscale","log");
shading interp;
axis tight;
title("Scalogram");
xlabel("Time (s)");
ylabel("Frequency (Hz)");
figure;
pcolor(t,frq,abs(cfs(:,:,2)));
set(gca,"yscale","log");
shading interp;
axis tight;
title("Scalogram");
xlabel("Time (s)");
ylabel("Frequency (Hz)");
[m,n] = size(signal)
[m,n,l] = size(cfs)
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Answers (1)
Walter Roberson
on 26 Nov 2023
toolbox/wavelet/wavelet/@cwtfilterbank/wt.m
% If X is complex-valued, CFS is a 3-D
% matrix, where the first page is the CWT for the positive
% scales (analytic part or counterclockwise component) and
% the second page is the CWT for the negative scales
% (anti-analytic part or clockwise component).
1 Comment
Walter Roberson
on 26 Nov 2023
why the first dimension is 137?
There are some complicated calculations to determine proper cutoff frequencies, and the cutoff frequency is used to compute the number of octaves, and then that is used to calculate scales from 0 to number of octaves times number of voices ... which comes out as 137 in this particular case.
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