posted on 2019-01-14, 15:02authored byHui FangHui Fang, S. Walton, E. Delahaye, J. Harris, D.A. Storchak, Min Chen
Mapping a set of categorical values to different colors is an elementary technique in data visualization. Users of visualization software routinely rely on the default colormaps provided by a system, or colormaps suggested by software such as ColorBrewer.
In practice, users often have to select a set of colors in a semantically meaningful way (e.g., based on conventions, color metaphors,
and logological associations), and consequently would like to ensure their perceptual differentiation is optimized. In this paper, we
present an algorithmic approach for maximizing the perceptual distances among a set of given colors. We address two technical problems in optimization, i.e., (i) the phenomena of local maxima that halt the optimization too soon, and (ii) the arbitrary reassignment
of colors that leads to the loss of the original semantic association. We paid particular attention to different types of constraints that
users may wish to impose during the optimization process. To demonstrate the effectiveness of this work, we tested this technique in
two case studies. To reach out to a wider range of users, we also developed a web application called Colourmap Hospital.
History
School
Science
Department
Computer Science
Published in
IEEE Transactions on Visualization and Computer Graphics
Volume
23
Issue
1
Pages
871 - 880
Citation
FANG, H. ... et al., 2016. Categorical colormap optimization with visualization case studies. IEEE Transactions on Visualization and Computer Graphics, 23(1), pp. 871 - 880.
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