Title :
Anisotropic volume rendering for extremely dense, thin line data
Author :
Schussman, Greg ; Ma, Kwan-Liu
Author_Institution :
Stanford Linear Accelerator Center, Menlo Park, CA, USA
Abstract :
Many large scale physics-based simulations which take place on PC clusters or supercomputers produce huge amounts of data including vector fields. While these vector data such as electromagnetic fields, fluid flow fields, or particle paths can be represented by lines, the sheer number of the lines overwhelms the memory and computation capability of a high-end PC used for visualization. Further, very dense or intertwined lines, rendered with traditional visualization techniques, can produce unintelligible results with unclear depth relationships between the lines and no sense of global structure. Our approach is to apply a lighting model to the lines and sample them into an anisotropic voxel representation based on spherical harmonics as a preprocessing step. Then we evaluate and render these voxels for a given view using traditional volume rendering. For extremely large line based datasets, conversion to anisotropic voxels reduces the overall storage and rendering for O(n) lines to O(1) with a large constant that is still small enough to allow meaningful visualization of the entire dataset at nearly interactive rates on a single commodity PC.
Keywords :
approximation theory; computational complexity; computational geometry; data visualisation; harmonics; image representation; lighting; physics computing; rendering (computer graphics); anisotropic volume rendering; anisotropic voxel representation; large line based datasets; lighting model; scientific visualization; single commodity PC; spherical harmonics; thin line data; vector field; volume visualization; Anisotropic magnetoresistance; Computer graphics; Data visualization; Fluid flow; Image storage; Linear accelerators; Magnetic fields; Rendering (computer graphics); Surface reconstruction; Vectors;
Conference_Titel :
Visualization, 2004. IEEE
Print_ISBN :
0-7803-8788-0
DOI :
10.1109/VISUAL.2004.5