%LABELIM Construct image of object (pixel) labels % % IM = LABELIM(A) % IM = A*LABELIM % % INPUT % A Dataset containing images stored as features % % OUTPUT % IM Image containing the labels of the objects % % DESCRIPTION % For a dataset A containing images stored as features, where each pixel % corresponds to an object, the routine creates an image presenting the % labels of the objects. Note that if the number of classes is small, e.g. % 2, an appropriate colormap will have to be loaded for displaying the % result using IMAGE(LABELS). More appropriate, LABELS should be multiplied % such that the minimum and maximum of LABELS are well spread in the [1,64] % interval of the standard colormaps. bb % The resulting image may also directly be displayed by: % LABELIM(A) or % A*LABELIM % for which a suitable colormap is loaded automatically. % % SEE ALSO (PRTools Guide) % DATASETS, CLASSIM % Copyright: R.P.W. Duin, duin@ph.tn.tudelft.nl % Faculty of Applied Sciences, Delft University of Technology % P.O. Box 5046, 2600 GA Delft, The Netherlands % $Id: labelim.m,v 1.2 2006/03/08 22:06:58 duin Exp $ function labels = labelim(a) % No arguments given: return an untrained mapping. if (nargin == 0) labels = prmapping('labelim','fixed'); return end isfeatim(a); % Assert that A is a feature image dataset. [n,m] = getobjsize(a); % Get image size and reshape labels to image. J = getnlab(a); labels = reshape(J,n,m); if (nargout == 0) n = 61/(size(a,2)+0.5); % If no output is requested, display the imagesc(labels*n); % image with a suitably scaled colormap. colormap colorcube; clear labels; end return