Publication
A Multiple-Scale Stochastic Modelling Primitive
AbstractStochastic modeling has been successfully used in computer graphics to model a wide array of natural phenomena. In modeling three-dimensional fuzzy or partially translucent phenomena, however, many approaches are hampered by high memory and computation requirements, and by a general lack of user control. We will present a general stochastic modeling primitive that operates on two or more scales of visual detail, and which offers considerable flexibility and control of the model. At the macroscopic level, the general shape of the model is constrained by an elliptical correlation function that controls the interpolation of user-supplied data values. We use a technique called Kriging to perform the interpolation. The microscopic levle permits the addition of noise, which allows a user to add interesting visual textural detail and translucency. A wide variety of noise-synthesis techniques can be employed in our model. We shall describe the mathematical structure of our model, and give an attractive rendering implementation that can be embedded in a traditional ray tracer rather than requiring a volume renderer. As an example, we shall apply our approach to the modeling of clouds.
Download publicationRelated Resources
See what’s new.
2014
On the Definition of a Computational Fluid Dynamic Solver using Cellular Discrete-Event SimulationThe Discrete Event System Specification (DEVS) has rarely been applied…
1998
Babble: Supporting Conversation in the WorkplaceFor the last year our group has been developing and using a prototype…
1999
Socially Translucent Systems: Social Proxies, Persistent Conversation, and the Design of “Babble”We take as our premise that it is possible and desirable to design…
2005
Cinematic Meeting Facilities Using Large DisplaysWe have investigated large-display technology for corporate meeting…
Get in touch
Something pique your interest? Get in touch if you’d like to learn more about Autodesk Research, our projects, people, and potential collaboration opportunities.
Contact us