Sign up & Download
Sign in

Extensions of Parallel Coordinates for Interactive Exploration of Large Multi-Timepoint Data Sets

by J Blaas, C P Botha, F H Post
IEEE Transactions on Visualization and Computer Graphics (2008)

Abstract

Parallel coordinate plots (PCPs) are commonly used in information visualization to provide insight into multi-variate data. These plots help to spot correlations between variables. PCPs have been successfully applied to unstructured datasets up to a few millions of points. In this paper, we present techniques to enhance the usability of PCPs for the exploration of large, multi-timepoint volumetric data sets, containing tens of millions of points per timestep. The main difficulties that arise when applying PCPs to large numbers of data points are visual clutter and slow performance, making interactive exploration infeasible. Moreover, the spatial context of the volumetric data is usually lost. We describe techniques for preprocessing using data quantization and compression, and for fast GPU-based rendering of PCPs using joint density distributions for each pair of consecutive variables, resulting in a smooth, continuous visualization. Also, fast brushing techniques are proposed for interactive data selection in multiple linked views, including a 3D spatial volume view. These techniques have been successfully applied to three large data sets: Hurricane Isabel (Vis'04 contest), the ionization front instability data set (Vis'08 design contest), and data from a large-eddy simulation of cumulus clouds. With these data, we show how PCPs can be extended to successfully visualize and interactively explore multi-timepoint volumetric datasets with an order of magnitude more data points.

Cite this document (BETA)

Available from www.ncbi.nlm.nih.gov
Page 1
hidden

Extensions of Parallel Coordinates for Interactive Exploration of Large Multi-Timepoint Data Sets

Plain text is unavailable for this page.

Sign up today - FREE

Mendeley saves you time finding and organizing research. Learn more

  • All your research in one place
  • Add and import papers easily
  • Access it anywhere, anytime

Start using Mendeley in seconds!

Already have an account? Sign in

Readership Statistics

17 Readers on Mendeley
by Discipline
 
 
 
by Academic Status
 
53% Ph.D. Student
 
12% Student (Bachelor)
 
6% Student (Master)
by Country
 
41% United States
 
12% Netherlands
 
12% Germany