How reduce data from 3917x2 to 1868x2 without change the entire of graph?
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Bajdar Nouredine
il 23 Ago 2024
Commentato: Walter Roberson
il 23 Ago 2024
I have zdata.mat contains data 3917x2 I need a way to reduce data to 1868x2 , (hint: first column refers to x axis, second column refers to y axis)
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John D'Errico
il 23 Ago 2024
Modificato: John D'Errico
il 23 Ago 2024
Just take every other data point, if you just want to roughly reduce the size. But you say you want a specific length. So then you would need to interpolate.
load zdata.mat
plot(z(:,1),z(:,2),'-')
x = z(:,1); y = z(:,2);
xnew = linspace(min(x),max(x),1868);
ynew = interp1(x,y,xnew);
length(ynew)
plot(xnew,ynew,'-')
Finally, if you want to do some smoothing, you might try something like:
ysmooth = smooth(x,y);
ynewsmooth = interp1(x,ysmooth,xnew);
plot(xnew,ynewsmooth,'-')
And depending on the smoothing method you choose, you can adjust the amount of smoothing done. You could also use a smoothing spline. Something like this (fit requires the curve fitting toolbox.)
spl = fit(x,y,'smoothingspline');
ynewspl = spl(xnew);
plot(xnew,ynewspl,'-')
Remember that when you have a sharp spike as this curve shows, anything you do to downsample such a curve may miss exactly where that spike happens, and how far it extends. But that is a given. If you reduce the sampling frequency, then you also reduce the information content of your data.
3 Commenti
John D'Errico
il 23 Ago 2024
Note that interp1 makes no presumption of a uniform stride between data points. This is also the case for fit, which does not give a hoot about uniformity of stride. Finally, while SOME of the methods offered in smooth do care, not all of them do.
Walter Roberson
il 23 Ago 2024
My note about the differences was after your original answer, but before you did the interpolation.
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