Probabilistic Asymptotic Decider for Topological Ambiguity Resolution in Level-Set Extraction for Uncertain 2D Data

Tushar Athawale, Chris R. Johnson

Research output: Contribution to journalArticlepeer-review

13 Scopus citations

Abstract

We present a framework for the analysis of uncertainty in isocontour extraction. The marching squares (MS) algorithm for isocontour reconstruction generates a linear topology that is consistent with hyperbolic curves of a piecewise bilinear interpolation. The saddle points of the bilinear interpolant cause topological ambiguity in isocontour extraction. The midpoint decider and the asymptotic decider are well-known mathematical techniques for resolving topological ambiguities. The latter technique investigates the data values at the cell saddle points for ambiguity resolution. The uncertainty in data, however, leads to uncertainty in underlying bilinear interpolation functions for the MS algorithm, and hence, their saddle points. In our work, we study the behavior of the asymptotic decider when data at grid vertices is uncertain. First, we derive closed-form distributions characterizing variations in the saddle point values for uncertain bilinear interpolants. The derivation assumes uniform and nonparametric noise models, and it exploits the concept of ratio distribution for analytic formulations. Next, the probabilistic asymptotic decider is devised for ambiguity resolution in uncertain data using distributions of the saddle point values derived in the first step. Finally, the confidence in probabilistic topological decisions is visualized using a colormapping technique. We demonstrate the higher accuracy and stability of the probabilistic asymptotic decider in uncertain data with regard to existing decision frameworks, such as deciders in the mean field and the probabilistic midpoint decider, through the isocontour visualization of synthetic and real datasets.

Original languageEnglish
Article number8440034
Pages (from-to)1163-1172
Number of pages10
JournalIEEE Transactions on Visualization and Computer Graphics
Volume25
Issue number1
DOIs
StatePublished - Jan 2019
Externally publishedYes

Funding

This project is supported in part by the National Institute of General Medical Sciences of the National Institutes of Health under grant number P41 GM103545-18 and by the Intel Parallel Computing Centers Program. We would like to thank the authors of the DEMETER project for sharing their data with us. We would also like to thank the reviewers of this article for their valuable feedback.

Keywords

  • asymptotic decider
  • bilinear interpolation
  • Isocontour visualization
  • marching squares
  • probabilistic computation
  • topological uncertainty

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