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I have some data (a function of two parameters) stored in a matlab format, and I'd like to use matlab to plot it. Once I read the data in, I use mesh() to make a plot. My mesh() plot gives me the the value of the function as a color and a surface height, like this:

A color and a surface height as a function of two independent variables.

What matlab plotting function should I use to make a 2D mesh plot where the dependent variable is represented as only a color? I'm looking for something like pm3d map in gnuplot.

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1  
How is the gnuplot function different from Matlab's mesh? With Mesh the color is proportional to the surface height. –  Molly Apr 2 '13 at 1:21
    
I don't want a surface; I just want a 2D map with colors. –  Dan Apr 2 '13 at 1:24

3 Answers 3

up vote 15 down vote accepted

By default mesh will color surface values based on the (default) jet colormap (i.e. hot is higher). You can additionally use surf for filled surface patches and set the 'EdgeColor' property to 'None' (so the patch edges are non-visible).

[X,Y] = meshgrid(-8:.5:8);
R = sqrt(X.^2 + Y.^2) + eps;
Z = sin(R)./R;

% surface in 3D
figure;
surf(Z,'EdgeColor','None');

enter image description here

2D map: You can get a 2D map by switching the view property of the figure

% 2D map using view
figure;
surf(Z,'EdgeColor','None');
view(2);    

enter image description here

... or treating the values in Z as a matrix, viewing it as a scaled image using imagesc and selecting an appropriate colormap.

% using imagesc to view just Z
figure;
imagesc(Z); 
colormap jet; 

enter image description here

The color pallet of the map is controlled by colormap(map), where map can be custom or any of the built-in colormaps provided by MATLAB:

enter image description here

Update/Refining the map: Several design options on the map (resolution, smoothing, axis etc.) can be controlled by the regular MATLAB options. As @Floris points out, here is a smoothed, equal-axis, no-axis labels maps, adapted to this example:

figure;
surf(X, Y, Z,'EdgeColor', 'None', 'facecolor', 'interp');
view(2);
axis equal; 
axis off;

enter image description here

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2  
Very nice answer (+1). If you add 'facecolor', 'interp' as an additional named property, you would get smoother interpolation of the colors instead of the blocky appearance you are getting now... Also, if the vectors describing X and Y dimensions are xv and yv, you can get the axes to scale with imagesc(xv, yv, Z); or turn the x and y axis labeling off with axis off. You will get the X and Y scaling to be the same with axis image - prevents the images from being stretched. Finally, if data starts out not being on a regular grid, you want to use the griddata function to resample. –  Floris Apr 2 '13 at 2:41
    
@Floris great points all of the above! Will update to reflect some. Many of these and similar options though (resolution, coarse or fine, regular grid etc.) will depend on the data representation and the needs of the mapping. –  gevang Apr 2 '13 at 3:01
1  
Thanks - and you are right. But things like interpolation will help even with coarse data, and getting the axes to reflect the scale of X and Y correctly is in my mind essential. If you don't label them right, don't label them at all (axis off). Your answer was so good, I wanted to help make it even better. –  Floris Apr 2 '13 at 3:04

gevang's answer is great. There's another way as well to do this directly by using pcolor. Code:

[X,Y] = meshgrid(-8:.5:8);
R = sqrt(X.^2 + Y.^2) + eps;
Z = sin(R)./R;
figure;
subplot(1,3,1);
pcolor(X,Y,Z); 
subplot(1,3,2);
pcolor(X,Y,Z); shading flat;
subplot(1,3,3);
pcolor(X,Y,Z); shading interp;

Output:

enter image description here

Also, pcolor is flat too, as show here (pcolor is the 2d base; the 3d figure above it is generated using mesh):

enter image description here

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I also suggest using contourf(Z). For my problem, I wanted to visualize a 3D histogram in 2D, but the contours were too smooth to represent a top view of histogram bars.

So in my case, I prefer to use jucestain's answer. The default shading faceted of pcolor() is more suitable. However, pcolor() does not use the last row and column of the plotted matrix. For this, I used the padarray() function:

pcolor(padarray(Z,[1 1],0,'post'))

Sorry if that is not really related to the original post

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