DocumentCode :
268090
Title :
Abstracting Attribute Space for Transfer Function Exploration and Design
Author :
Maciejewski, Ross ; Jang, Yun ; Woo, Insoo ; Jänicke, H. ; Gaither, Kelly P. ; Ebert, David S.
Author_Institution :
Arizona State Univ., Tempe, AZ, USA
Volume :
19
Issue :
1
fYear :
2013
fDate :
Jan. 2013
Firstpage :
94
Lastpage :
107
Abstract :
Currently, user centered transfer function design begins with the user interacting with a one or two-dimensional histogram of the volumetric attribute space. The attribute space is visualized as a function of the number of voxels, allowing the user to explore the data in terms of the attribute size/magnitude. However, such visualizations provide the user with no information on the relationship between various attribute spaces (e.g., density, temperature, pressure, x, y, z) within the multivariate data. In this work, we propose a modification to the attribute space visualization in which the user is no longer presented with the magnitude of the attribute; instead, the user is presented with an information metric detailing the relationship between attributes of the multivariate volumetric data. In this way, the user can guide their exploration based on the relationship between the attribute magnitude and user selected attribute information as opposed to being constrained by only visualizing the magnitude of the attribute. We refer to this modification to the traditional histogram widget as an abstract attribute space representation. Our system utilizes common one and two-dimensional histogram widgets where the bins of the abstract attribute space now correspond to an attribute relationship in terms of the mean, standard deviation, entropy, or skewness. In this manner, we exploit the relationships and correlations present in the underlying data with respect to the dimension(s) under examination. These relationships are often times key to insight and allow us to guide attribute discovery as opposed to automatic extraction schemes which try to calculate and extract distinct attributes a priori. In this way, our system aids in the knowledge discovery of the interaction of properties within volumetric data.
Keywords :
data mining; data visualisation; transfer functions; user centred design; abstract attribute space representation; attribute discovery; attribute information; attribute magnitude; attribute space visualization; automatic extraction schemes; entropy; histogram widget; information metric; knowledge discovery; mean; multivariate volumetric data; one-dimensional histogram; skewness; standard deviation; transfer function exploration; two-dimensional histogram; user centered transfer function design; volumetric attribute space abstraction; Data visualization; Entropy; Histograms; Image color analysis; Measurement; Rendering (computer graphics); Transfer functions; Data visualization; Entropy; Histograms; Image color analysis; Measurement; Rendering (computer graphics); Transfer function design; Transfer functions; abstract attribute space representation; attribute discovery; attribute information; attribute magnitude; attribute space visualization; automatic extraction schemes; data mining; data visualisation; entropy; histogram widget; information metric; information theory; knowledge discovery; mean; multivariate volumetric data; one-dimensional histogram; skewness; standard deviation; transfer function exploration; transfer functions; two-dimensional histogram; user centered transfer function design; user centred design; volume rendering; volumetric attribute space abstraction;
fLanguage :
English
Journal_Title :
Visualization and Computer Graphics, IEEE Transactions on
Publisher :
ieee
ISSN :
1077-2626
Type :
jour
DOI :
10.1109/TVCG.2012.105
Filename :
6185542
Link To Document :
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