DocumentCode
21658
Title
Learning Perceptual Kernels for Visualization Design
Author
Demiralp, Cagatay Demiralp ; Bernstein, Michael S. ; Heer, Jeffrey
Author_Institution
Stanford Univ., Stanford, CA, USA
Volume
20
Issue
12
fYear
2014
fDate
Dec. 31 2014
Firstpage
1933
Lastpage
1942
Abstract
Visualization design can benefit from careful consideration of perception, as different assignments of visual encoding variables such as color, shape and size affect how viewers interpret data. In this work, we introduce perceptual kernels: distance matrices derived from aggregate perceptual judgments. Perceptual kernels represent perceptual differences between and within visual variables in a reusable form that is directly applicable to visualization evaluation and automated design. We report results from crowd-sourced experiments to estimate kernels for color, shape, size and combinations thereof. We analyze kernels estimated using five different judgment types-including Likert ratings among pairs, ordinal triplet comparisons, and manual spatial arrangement-and compare them to existing perceptual models. We derive recommendations for collecting perceptual similarities, and then demonstrate how the resulting kernels can be applied to automate visualization design decisions.
Keywords
data visualisation; visual perception; distance matrices; learning perceptual kernels; manual spatial arrangement; ordinal triplet comparisons; visual encoding variables; visualization design; visualization evaluation; Color analysis; Data visualization; Encoding; Image color analysis; Kernel; Shape analysis; Visualization; Visualization; automated visualization; crowdsourcing; design; encoding; model; perception; visual embedding;
fLanguage
English
Journal_Title
Visualization and Computer Graphics, IEEE Transactions on
Publisher
ieee
ISSN
1077-2626
Type
jour
DOI
10.1109/TVCG.2014.2346978
Filename
6875950
Link To Document