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HyperDiffusion: Generating Implicit Neural Fields with Weight-Space Diffusion

HyperDiffusion generates new implicit neural fields by modeling the distribution of MLP weights, enabling synthesis of high-fidelity 3D shapes and 4D animations.

Year
2023
Venue
ICCV 2023 1
Authors
5
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arxiv.org/abs/2303.17015ARXIV-DEFAULT
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Abstract

Implicit neural fields, typically encoded by a multilayer perceptron (MLP) that maps from coordinates (e.g., xyz) to signals (e.g., signed distances), have shown remarkable promise as a high-fidelity and compact representation. However, the lack of a regular and explicit grid structure also makes it challenging to apply generative modeling directly on implicit neural fields in order to synthesize new data. To this end, we propose HyperDiffusion, a novel approach for unconditional generative modeling of implicit neural fields. HyperDiffusion operates directly on MLP weights and generates new neural implicit fields encoded by synthesized MLP parameters. Specifically, a collection of MLPs is first optimized to faithfully represent individual data samples. Subsequently, a diffusion process is trained in this MLP weight space to model the underlying distribution of neural implicit fields. HyperDiffusion enables diffusion modeling over a implicit, compact, and yet high-fidelity representation of complex signals across 3D shapes and 4D mesh animations within one single unified framework.

Authors

5