RaFE: Generative Radiance Fields Restoration
arxiv(2024)
摘要
NeRF (Neural Radiance Fields) has demonstrated tremendous potential in novel
view synthesis and 3D reconstruction, but its performance is sensitive to input
image quality, which struggles to achieve high-fidelity rendering when provided
with low-quality sparse input viewpoints. Previous methods for NeRF restoration
are tailored for specific degradation type, ignoring the generality of
restoration. To overcome this limitation, we propose a generic radiance fields
restoration pipeline, named RaFE, which applies to various types of
degradations, such as low resolution, blurriness, noise, compression artifacts,
or their combinations. Our approach leverages the success of off-the-shelf 2D
restoration methods to recover the multi-view images individually. Instead of
reconstructing a blurred NeRF by averaging inconsistencies, we introduce a
novel approach using Generative Adversarial Networks (GANs) for NeRF generation
to better accommodate the geometric and appearance inconsistencies present in
the multi-view images. Specifically, we adopt a two-level tri-plane
architecture, where the coarse level remains fixed to represent the low-quality
NeRF, and a fine-level residual tri-plane to be added to the coarse level is
modeled as a distribution with GAN to capture potential variations in
restoration. We validate RaFE on both synthetic and real cases for various
restoration tasks, demonstrating superior performance in both quantitative and
qualitative evaluations, surpassing other 3D restoration methods specific to
single task. Please see our project website
https://zkaiwu.github.io/RaFE-Project/.
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