Table 2: Mean and minimum RGB color distance between
neighboring nodes for the three color distribution methods
and different numbers k of core colors, averaged over all
images from the PRIMA dataset.
method mean dist min dist
k = 6 maxdist 325.6 239.3
random 325.1 234.6
coredist 325.3 235.4
k = 16 maxdist 259.8 120.0
random 259.0 115.0
coredist 259.6 115.4
k = 26 maxdist 233.8 77.4
random 233.3 73.1
coredist 233.6 73.9
cluster to its nodes will therefore often be a sufficient
and reasonable approach in practice.
5 CONCLUSIONS
The methods proposed in this paper provide a practi-
cal solution for using colors as segmentation labels in
such a way that the segmentation is easily visible in
the resulting color image for a human observer.
Nevertheless, there remain two interesting areas of
further research. One consists in finding better ways
for selecting the initial k colors, both with respect to
the optimization criterion Eq. (3) and to an appropri-
ate color distance measure. As the latter problem of
defining a perceptual color distance is a very diffi-
cult problem still waiting for satisfactory solutions,
it might alternatively be more promising to perform
psychological experiments for directly selecting the k
perceptually “most different” colors. The other open
problem is the more fundamental algorithmic ques-
tion whether there is an efficient exact or approximate
solution for the generalized graph coloring problem
stated in the introduction.
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