Journal of Visualization

, Volume 20, Issue 2, pp 217–229 | Cite as

User-defined feature comparison for vector field ensembles

Regular Paper
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Abstract

Most of the existing approaches to visualize vector field ensembles are to reveal the uncertainty of individual variables, for example, statistics, variability, etc. However, a user-defined derived feature like vortex or air mass is also quite significant, since they make more sense to domain scientists. In this paper, we present a new framework to extract user-defined derived features from different simulation runs. Specially, we use a detail-to-overview searching scheme to help extract vortex with a user-defined shape. We further compute the geometry information including the size, the geo-spatial location of the extracted vortexes. We also design some linked views to compare them between different runs. At last, the temporal information such as the occurrence time of the feature is further estimated and compared. Results show that our method is capable of extracting the features across different runs and comparing them spatially and temporally.

Graphical abstract

Keywords

Ensemble visualization Comparative visualization User-defined feature 

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Copyright information

© The Visualization Society of Japan 2016

Authors and Affiliations

  1. 1.Key Laboratory of Machine Perception (Ministry of Education), School of Electronics Engineering and Computer Science (EECS)Peking UniversityBeijingChina
  2. 2.Argonne National LaboratoryArgonneUSA
  3. 3.Beijing Engineering Technology Research Center of Virtual Simulation and VisualizationPeking UniversityBeijingChina

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