Title
Decoupled Opacity Optimization for Points, Lines and Surfaces.
Abstract
Displaying geometry inflow visualization is often accompanied by occlusion problems, making it difficult to perceive information that is relevant in the respective application. In a recent technique, named opacity optimization, the balance of occlusion avoidance and the selection of meaningful geometry was recognized to be a view-dependent, global optimization problem. The method solves a bounded-variable least-squares problem, which minimizes energy terms for the reduction of occlusion, background clutter, adding smoothness and regularization. The original technique operates on an object-space discretization and was shown for line and surface geometry. Recently, it has been extended to volumes, where it was solved locally per ray by dropping the smoothness energy term and replacing it by pre-filtering the importance measure. In this paper, we pick up the idea of splitting the opacity optimization problem into two smaller problems. The first problem is a minimization with analytic solution, and the second problem is a smoothing of the obtained minimizer in object-space. Thereby, the minimization problem can be solved locally per pixel, making it possible to combine all geometry types points, lines and surfaces consistently in a single optimization framework. We call this decoupled opacity optimization and apply it to a number of steady 3D vector fields.
Year
DOI
Venue
2017
10.1111/cgf.13115
Comput. Graph. Forum
Field
DocType
Volume
Computer vision,Computer graphics (images),Computer science,Opacity,Artificial intelligence
Journal
36
Issue
ISSN
Citations 
2
0167-7055
5
PageRank 
References 
Authors
0.40
22
3
Name
Order
Citations
PageRank
Tobias Günther1358.34
Holger Theisel2147999.18
Markus H. Gross310154549.95