DocumentCode :
2487264
Title :
Gaussian mixture model based volume visualization
Author :
Shusen Liu ; Levine, J.A. ; Bremer, P. ; Pascucci, V.
fYear :
2012
fDate :
14-15 Oct. 2012
Firstpage :
73
Lastpage :
77
Abstract :
Representing uncertainty when creating visualizations is becoming more indispensable to understand and analyze scientific data. Uncertainty may come from different sources, such as, ensembles of experiments or unavoidable information loss when performing data reduction. One natural model to represent uncertainty is to assume that each position in space instead of a single value may take on a distribution of values. In this paper we present a new volume rendering method using per voxel Gaussian mixture models (GMMs) as the input data representation. GMMs are an elegant and compact way to drastically reduce the amount of data stored while still enabling realtime data access and rendering on the GPU. Our renderer offers efficient sampling of the data distribution, generating renderings of the data that flicker at each frame to indicate high variance. We can accumulate samples as well to generate still frames of the data, which preserve additional details in the data as compared to either traditional scalar indicators (such as a mean or a single nearest neighbor down sample) or to fitting the data with only a single Gaussian per voxel. We demonstrate the effectiveness of our method using ensembles of climate simulations and MRI scans as well as the down sampling of large scalar fields as examples.
Keywords :
Gaussian processes; data reduction; data structures; data visualisation; information retrieval; natural sciences computing; real-time systems; rendering (computer graphics); GMM; GPU; Gaussian mixture model; MRI scans; climate simulations; data distribution; data fitting; data reduction; down sampling; input data representation; large scalar fields; real-time data access; scientific data analysis; uncertainty representation; volume rendering method; volume visualization; Computational modeling; Data models; Data visualization; Graphics processing units; Rendering (computer graphics); Transfer functions; Uncertainty; Ensemble Visualization; Gaussian Mixture Model; Uncertainty Visualization; Volume Rendering;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Large Data Analysis and Visualization (LDAV), 2012 IEEE Symposium on
Conference_Location :
Seattle, WA
Print_ISBN :
978-1-4673-4732-7
Type :
conf
DOI :
10.1109/LDAV.2012.6378978
Filename :
6378978
Link To Document :
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