Title
Illuminated 3D scatterplots
Abstract
In contrast to 2D scatterplots, the existing 3D variants have the advantage of showing one additional data dimension, but suffer from inadequate spatial and shape perception and therefore are not well suited to display structures of the underlying data. We improve shape perception by applying a new illumination technique to the pointcloud representation of 3D scatterplots. Points are classified as locally linear, planar, and volumetric structures--according to the eigenvalues of the inverse distance-weighted covariance matrix at each data element. Based on this classification, different lighting models are applied: codimension-2 illumination, surface illumination, and emissive volumetric illumination. Our technique lends itself to efficient GPU point rendering and can be combined with existing methods like semi-transparent rendering, halos, and depth or attribute based color coding. The user can interactively navigate in the dataset and manipulate the classification and other visualization parameters. We demonstrate our visualization technique by showing examples of multi-dimensional data and of generic pointcloud data.
Year
DOI
Venue
2009
10.1111/j.1467-8659.2009.01477.x
Comput. Graph. Forum
Keywords
Field
DocType
additional data dimension,data element,new illumination technique,codimension-2 illumination,shape perception,multi-dimensional data,surface illumination,emissive volumetric illumination,generic pointcloud data,underlying data
Color-coding,Inverse,Computer vision,Data element,Computer science,Visualization,Planar,Artificial intelligence,Covariance matrix,Rendering (computer graphics),Eigenvalues and eigenvectors
Journal
Volume
Issue
ISSN
28
3
0167-7055
Citations 
PageRank 
References 
7
0.46
21
Authors
2
Name
Order
Citations
PageRank
Harald Sanftmann1203.12
Daniel Weiskopf22988204.30