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Data-Driven Space-Filling Curves

Liang Zhou, Chris R. Johnson, Daniel Weiskopf

2020IEEE Transactions on Visualization and Computer Graphics34 citationsDOIOpen Access PDF

Abstract

Abstract-We propose a data-driven space-filling curve method for 2D and 3D visualization. Our flexible curve traverses the data elements in the spatial domain in a way that the resulting linearization better preserves features in space compared to existing methods. We achieve such data coherency by calculating a Hamiltonian path that approximately minimizes an objective function that describes the similarity of data values and location coherency in a neighborhood. Our extended variant even supports multiscale data via quadtrees and octrees. Our method is useful in many areas of visualization including multivariate or comparative visualization ensemble visualization of 2D and 3D data on regular grids or multiscale visual analysis of particle simulations. The effectiveness of our method is evaluated with numerical comparisons to existing techniques and through examples of ensemble and multivariate datasets.

Topics & Concepts

VisualizationComputer scienceData visualizationAlgorithmLinearizationMultivariate statisticsData miningPath (computing)Machine learningNonlinear systemProgramming languageQuantum mechanicsPhysicsData Visualization and AnalyticsData Analysis with RComputer Graphics and Visualization Techniques
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