Publications in Scientific Journals:
I. Viola, A. Kanitsar, E. Gröller:
"Importance-Driven Feature Enhancement in Volume Visualization";
IEEE Transactions on Visualization and Computer Graphics,
This paper presents importance-driven feature enhancement as a technique for the automatic generation of cut-away and ghosted views out of volumetric data. The presented focus+context approach removes or suppresses less important parts of a scene to reveal more important underlying information. however, less important parts are fully visible in those regions, where important visual information is not lost, i.e., more relevant features are not occluded. Features within the volumetric data are first classified according to a new dimension denoted as object importance. This property determines which structures should be readily discernible and which structures are less important. Next, for each feature various representations (levels of sparseness) from a dense to a sparse depiction are defined. Levels of sparseness define a spectrum of optical properties or rendering styles. The resulting image is generated by ray-casting and combining the intersected features proportional to their importance (importance compositing). The paper includes an extended discussion on several possible schemes for levels of sparseness specification. Furthermore different approaches to importance compositing are treated.
Online library catalogue of the TU Vienna:
Project Head Eduard Gröller:
FFF Adapt = Abt. 186/2
Created from the Publication Database of the Vienna University of Technology.