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1.
IEEE Comput Graph Appl ; 34(6): 83-7, 2014.
Artigo em Inglês | MEDLINE | ID: mdl-25388235

RESUMO

Using random per-element luminance modulation can increase the visual salience of details in a range of visualizations (2D, 3D, and ND scalar, vector, and tensor fields). Although random luminance has been used in specific designs, its wide applicability isn't reflected in visualizations, perhaps because it hasn't yet been presented as a cross-cutting technique. Adding random-luminance contrast can benefit both static and animated visualizations. The article presents perceptual reasons for this technique's effectiveness. This article has two accompanying videos, at http://youtu.be/TTaSFMvBgvg and http://youtu.be/Rx1oPMTpPA4, showing animations of cones moving through a weather simulation, with and without random luminance modulation.


Assuntos
Iluminação , Visão Ocular/fisiologia , Humanos
2.
Proc SPIE Int Soc Opt Eng ; 8294: 82940T, 2012.
Artigo em Inglês | MEDLINE | ID: mdl-23145217

RESUMO

We present three extensions to parallel coordinates that increase the perceptual salience of relationships between axes in multivariate data sets: (1) luminance modulation maintains the ability to preattentively detect patterns in the presence of overplotting, (2) adding a one-vs.-all variable display highlights relationships between one variable and all others, and (3) adding a scatter plot within the parallel-coordinates display preattentively highlights clusters and spatial layouts without strongly interfering with the parallel-coordinates display. These techniques can be combined with one another and with existing extensions to parallel coordinates, and two of them generalize beyond cases with known-important axes. We applied these techniques to two real-world data sets (relativistic heavy-ion collision hydrodynamics and weather observations with statistical principal component analysis) as well as the popular car data set. We present relationships discovered in the data sets using these methods.

3.
Proc SPIE Int Soc Opt Eng ; 8294(82940B)2012 Feb 01.
Artigo em Inglês | MEDLINE | ID: mdl-22347540

RESUMO

An ensemble is a collection of related datasets. Each dataset, or member, of an ensemble is normally large, multidimensional, and spatio-temporal. Ensembles are used extensively by scientists and mathematicians, for example, by executing a simulation repeatedly with slightly different input parameters and saving the results in an ensemble to see how parameter choices affect the simulation. To draw inferences from an ensemble, scientists need to compare data both within and between ensemble members. We propose two techniques to support ensemble exploration and comparison: a pairwise sequential animation method that visualizes locally neighboring members simultaneously, and a screen door tinting method that visualizes subsets of members using screen space subdivision. We demonstrate the capabilities of both techniques, first using synthetic data, then with simulation data of heavy ion collisions in high-energy physics. Results show that both techniques are capable of supporting meaningful comparisons of ensemble data.

4.
Proc SPIE Int Soc Opt Eng ; 82942012 Jan 22.
Artigo em Inglês | MEDLINE | ID: mdl-23560167

RESUMO

By definition, an ensemble is a set of surfaces or volumes derived from a series of simulations or experiments. Sometimes the series is run with different initial conditions for one parameter to determine parameter sensitivity. The understanding and identification of visual similarities and differences among the shapes of members of an ensemble is an acute and growing challenge for researchers across the physical sciences. More specifically, the task of gaining spatial understanding and identifying similarities and differences between multiple complex geometric data sets simultaneously has proved challenging. This paper proposes a comparison and visualization technique to support the visual study of parameter sensitivity. We present a novel single-image view and sampling technique which we call Ensemble Surface Slicing (ESS). ESS produces a single image that is useful for determining differences and similarities between surfaces simultaneously from several data sets. We demonstrate the usefulness of ESS on two real-world data sets from our collaborators.

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