Topology Guidance: Controlling the Outputs of Generative Models via Vector Field Topology
Xiaohan Wang, Matthew Berger

TL;DR
This paper introduces topology guidance, a novel method for controlling generative models of vector fields to produce outputs with specified topological features, enhancing interpretability and comparison in fluid flow analysis.
Contribution
The paper proposes a new approach coupling coordinate-based neural networks with diffusion models to enforce topological constraints in generated fields.
Findings
Generated vector fields accurately match specified topological features.
Method effectively guides diffusion models to produce topologically consistent fields.
Facilitates comparison of fluid flow ensembles based on topological characteristics.
Abstract
For domains that involve numerical simulation, it can be computationally expensive to run an ensemble of simulations spanning a parameter space of interest to a user. To this end, an attractive surrogate for simulation is the generative modeling of fields produced by an ensemble, allowing one to synthesize fields in a computationally cheap, yet accurate, manner. However, for the purposes of visual analysis, a limitation of generative models is their lack of control, as it is unclear what one should expect when sampling a field from a model. In this paper we study how to make generative models of fields more controllable, so that users can specify features of interest, in particular topological features, that they wish to see in the output. We propose topology guidance, a method for guiding the sampling process of a generative model, specifically a diffusion model, such that a…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Computer Graphics and Visualization Techniques · Data Visualization and Analytics
MethodsDiffusion
