In MATLAB you can use either the function griddata
or the TriScatteredInterp
class (Note: as of R2013a scatteredInterpolant
is the recommended alternative). Both of these allow you to fit a surface of regularly-spaced data to a set of nonuniformly-spaced points (although it appears griddata
is no longer recommended in newer MATLAB versions). Here’s how you can use each:
-
griddata
:[XI,YI,ZI] = griddata(x,y,z,XI,YI)
where
x,y,z
each represent vectors of the cartesian coordinates for each point (in this case the points on the contour lines). The row vectorXI
and column vectorYI
are the cartesian coordinates at whichgriddata
interpolates the valuesZI
of the fitted surface. The new values returned for the matricesXI,YI
are the same as the result of passingXI,YI
tomeshgrid
to create a uniform grid of points. -
TriScatteredInterp
class:[XI,YI] = meshgrid(...); F = TriScatteredInterp(x(:),y(:),z(:)); ZI = F(XI,YI);
where
x,y,z
again represent vectors of the cartesian coordinates for each point, only this time I’ve used a colon reshaping operation(:)
to ensure that each is a column vector (the required format forTriScatteredInterp
). The interpolantF
is then evaluated using the matricesXI,YI
that you must create usingmeshgrid
.
Example & Comparison
Here’s some sample code and the resulting figure it generates for reconstructing a surface from contour data using both methods above. The contour data was generated with the contour
function:
% First plot:
subplot(2,2,1);
[X,Y,Z] = peaks; % Create a surface
surf(X,Y,Z);
axis([-3 3 -3 3 -8 9]);
title('Original');
% Second plot:
subplot(2,2,2);
[C,h] = contour(X,Y,Z); % Create the contours
title('Contour map');
% Format the coordinate data for the contours:
Xc = [];
Yc = [];
Zc = [];
index = 1;
while index < size(C,2)
Xc = [Xc C(1,(index+1):(index+C(2,index)))];
Yc = [Yc C(2,(index+1):(index+C(2,index)))];
Zc = [Zc C(1,index).*ones(1,C(2,index))];
index = index+1+C(2,index);
end
% Third plot:
subplot(2,2,3);
[XI,YI] = meshgrid(linspace(-3,3,21)); % Generate a uniform grid
ZI = griddata(Xc,Yc,Zc,XI,YI); % Interpolate surface
surf(XI,YI,ZI);
axis([-3 3 -3 3 -8 9]);
title('GRIDDATA reconstruction');
% Fourth plot:
subplot(2,2,4);
F = TriScatteredInterp(Xc(:),Yc(:),Zc(:)); % Generate interpolant
ZIF = F(XI,YI); % Evaluate interpolant
surf(XI,YI,ZIF);
axis([-3 3 -3 3 -8 9]);
title('TriScatteredInterp reconstruction');
Notice that there is little difference between the two results (at least at this scale). Also notice that the interpolated surfaces have empty regions near the corners due to the sparsity of contour data at those points.
You can use the gridfit tool, found on the MATLAB Central file exchange. One of the examples I give is exactly what you want to do, starting from a list of points taken from isolines, I reconstruct a smooth surface from the data. In fact, the example I used was taken from a topographic map.