Grounding Continuous Representations in Geometry: Equivariant Neural Fields
David R Wessels, David M Knigge, Samuele Papa, Riccardo Valperga,, Sharvaree Vadgama, Efstratios Gavves, Erik J Bekkers

TL;DR
This paper introduces Equivariant Neural Fields (ENFs), a new architecture for continuous signal representations that explicitly models geometric information, enabling better geometric reasoning and transformation capabilities in tasks like classification and segmentation.
Contribution
ENFs incorporate geometry-informed cross-attention to create equivariant neural fields, improving geometric reasoning and efficiency over previous latent space models.
Findings
Enhanced geometric reasoning in classification and segmentation.
Improved efficiency through weight-sharing of local patterns.
Demonstrated superior performance across multiple tasks.
Abstract
Conditional Neural Fields (CNFs) are increasingly being leveraged as continuous signal representations, by associating each data-sample with a latent variable that conditions a shared backbone Neural Field (NeF) to reconstruct the sample. However, existing CNF architectures face limitations when using this latent downstream in tasks requiring fine-grained geometric reasoning, such as classification and segmentation. We posit that this results from lack of explicit modelling of geometric information (e.g., locality in the signal or the orientation of a feature) in the latent space of CNFs. As such, we propose Equivariant Neural Fields (ENFs), a novel CNF architecture which uses a geometry-informed cross-attention to condition the NeF on a geometric variable--a latent point cloud of features--that enables an equivariant decoding from latent to field. We show that this approach induces a…
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Taxonomy
TopicsNeural Networks and Applications
