TY - JOUR
T1 - Visualizing the stability of critical points in uncertain scalar fields
AU - Mihai, Mihaela
AU - Westermann, Rüdigger
N1 - Funding Information:
The work was partly funded by the European Union under the ERC Advanced Grant 291372 : Safer-Vis – Uncertainty Visualization for Reliable Data Discovery. We thank Tobias Pfaffelmoser for valuable discussions during the development of the work described here. Access to ECMWF prediction data has been kindly provided in the context of the ECMWF special project “Support Tool for HALO Missions”. We are grateful to the special project members Marc Rautenhaus and Andreas Dörnbrack for providing the ECMWF EPS dataset of October 17, 2012.
PY - 2014/6
Y1 - 2014/6
N2 - In scalar fields, critical points (points with vanishing derivatives) are important indicators of the topology of iso-contours. When the data values are affected by uncertainty, the locations and types of critical points vary and can no longer be predicted accurately. In this paper, we derive, from a given uncertain scalar ensemble, measures for the likelihood of the occurrence of critical points, with respect to both the positions and types of the critical points. In an ensemble, every instance is a possible occurrence of the phenomenon represented by the scalar values. We show that, by deriving confidence intervals for the gradient and the determinant and trace of the Hessian matrix in scalar ensembles, domain points can be classified according to whether a critical point can occur at a certain location and a specific type of critical point should be expected there. When the data uncertainty can be described stochastically via Gaussian distributed random variables, we show that even probabilistic measures for these events can be deduced.
AB - In scalar fields, critical points (points with vanishing derivatives) are important indicators of the topology of iso-contours. When the data values are affected by uncertainty, the locations and types of critical points vary and can no longer be predicted accurately. In this paper, we derive, from a given uncertain scalar ensemble, measures for the likelihood of the occurrence of critical points, with respect to both the positions and types of the critical points. In an ensemble, every instance is a possible occurrence of the phenomenon represented by the scalar values. We show that, by deriving confidence intervals for the gradient and the determinant and trace of the Hessian matrix in scalar ensembles, domain points can be classified according to whether a critical point can occur at a certain location and a specific type of critical point should be expected there. When the data uncertainty can be described stochastically via Gaussian distributed random variables, we show that even probabilistic measures for these events can be deduced.
KW - Critical points
KW - Scalar topology
KW - Stability
KW - Uncertainty
UR - http://www.scopus.com/inward/record.url?scp=84896757806&partnerID=8YFLogxK
U2 - 10.1016/j.cag.2014.01.007
DO - 10.1016/j.cag.2014.01.007
M3 - Article
AN - SCOPUS:84896757806
SN - 0097-8493
VL - 41
SP - 13
EP - 25
JO - Computers and Graphics (Pergamon)
JF - Computers and Graphics (Pergamon)
IS - 1
ER -