Matlab: Colour grade a Constellation Diagram

I am using Matlab. I have a large column vector consisting of complex values. e.g.

data=[
-0.4447 + 0.6263i
0.3114 + 0.8654i
0.7201 + 0.6808i
0.7566 + 0.8177i
-0.7532 - 0.8085i
-0.7851 + 0.6042i
-0.7351 - 0.8725i
-0.4580 + 0.8053i
0.5775 - 0.6369i
0.7073 - 0.5565i
0.4939 - 0.7015i
-0.4981 + 0.8112i
....
]

This represents a constellation diagram which is shown below.

I would like to colour grade the constellation points depending on frequency at a particular point. I presume I need to create a histogram, but I am not sure how to do this using complex vectors and then how to plot the colour grade. Any help appreciated.

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Sorry, but I am not able to understand what you exactly mean by "to colour grade the constellation points depending on frequency at a particular point". Can you please be more explicit about the math of what you want to do? – Acorbe Nov 22 '12 at 12:02
Do you want to plot the constellation diagram of an OFDM signal with different colors for each subcarrier? – Deve Nov 22 '12 at 12:38
Sorry, but colour grade I mean: "The Color Grade feature provides an inﬁnite persistence plot where the frequency of occurrence of a point on the plot is indicated by its color." An example is given here: dropbox.com/s/ujlnb29xvybmbtr/colour%20grade%20QPSK.JPG – user1844666 Nov 22 '12 at 16:14

I think you want to do a heat map:

``````histdata = [real(data), imag(data)];
nbins_x = nbins_y = 10;
[N, C] = hist3(histdata, [nbins_x, nbins_y]); % the second argument is optional.
imagesc(N);
``````

Here `hist3` creates the histogram-matrix, `imagesc` draws a scaled heat-map. If you prefer a 3d-visualization, just type `hist3(histdata)`.

If you just right-click on N in the workspace window there are plenty of other visualization options. I suggest also trying `contourf(N)` which is a filled contour plot.

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 Thank you for your help. Heat-map was exactly the phrase I was looking for. – user1844666 Nov 25 '12 at 23:13 no problem, man. – Barnabas Szabolcs Nov 26 '12 at 4:06

So, what you want to do is to find a two-2 histogram. The easiest way would be to separate out the real and imaginary points, and use the hist2d function, like this:

``````rdata=real(data);
idata=imag(data);

hist2d([rdata;idata]);
``````
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 Thank you for your help, this worked great – user1844666 Nov 25 '12 at 23:12