DocumentCode
831849
Title
Outlier-Preserving Focus+Context Visualization in Parallel Coordinates
Author
Novotny, M. ; Hauser, H.
Author_Institution
Comenius Univ., Bratislava
Volume
12
Issue
5
fYear
2006
Firstpage
893
Lastpage
900
Abstract
Focus+context visualization integrates a visually accentuated representation of selected data items in focus (more details, more opacity, etc.) with a visually deemphasized representation of the rest of the data, i.e., the context. The role of context visualization is to provide an overview of the data for improved user orientation and improved navigation. A good overview comprises the representation of both outliers and trends. Up to now, however, context visualization not really treated outliers sufficiently. In this paper we present a new approach to focus+context visualization in parallel coordinates which is truthful to outliers in the sense that small-scale features are detected before visualization and then treated specially during context visualization. Generally, we present a solution which enables context visualization at several levels of abstraction, both for the representation of outliers and trends. We introduce outlier detection and context generation to parallel coordinates on the basis of a binned data representation. This leads to an output-oriented visualization approach which means that only those parts of the visualization process are executed which actually affect the final rendering. Accordingly, the performance of this solution is much more dependent on the visualization size than on the data size which makes it especially interesting for large datasets. Previous approaches are outperformed, the new solution was successfully applied to datasets with up to 3 million data records and up to 50 dimensions
Keywords
data structures; data visualisation; feature extraction; rendering (computer graphics); context visualization; data abstraction; data representation; focus visualization; outlier detection; output-oriented visualization approach; parallel coordinate; rendering technique; small-scale feature detection; Computer vision; Concurrent computing; Costs; Data visualization; Humans; Information processing; Jamming; Multidimensional systems; Navigation; Visual system; Parallel coordinates; focus+context visualization; large data visualization.; outliers & trends;
fLanguage
English
Journal_Title
Visualization and Computer Graphics, IEEE Transactions on
Publisher
ieee
ISSN
1077-2626
Type
jour
DOI
10.1109/TVCG.2006.170
Filename
4015444
Link To Document