Geometry-Informed Neural Networks
Geometry is a ubiquitous tool in computer graphics, design, and engineering. However, the lack of large shape datasets limits the application of state-of-the-art supervised learning methods and motivates the exploration of alternative learning strategies. To this end, we introduce geometry-informed...
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Zusammenfassung: | Geometry is a ubiquitous tool in computer graphics, design, and engineering.
However, the lack of large shape datasets limits the application of
state-of-the-art supervised learning methods and motivates the exploration of
alternative learning strategies. To this end, we introduce geometry-informed
neural networks (GINNs) -- a framework for training shape-generative neural
fields without data by leveraging user-specified design requirements in the
form of objectives and constraints. By adding diversity as an explicit
constraint, GINNs avoid mode-collapse and can generate multiple diverse
solutions, often required in geometry tasks. Experimentally, we apply GINNs to
several validation problems and a realistic 3D engineering design problem,
showing control over geometrical and topological properties, such as surface
smoothness or the number of holes. These results demonstrate the potential of
training shape-generative models without data, paving the way for new
generative design approaches without large datasets. |
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DOI: | 10.48550/arxiv.2402.14009 |