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Bayes' Rays: Uncertainty Quantification for Neural Radiance Fields

6 September 2023
Lily Goli
Cody Reading
Silvia Sellán
Alec Jacobson
Andrea Tagliasacchi
    BDL
    UQCV
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Abstract

Neural Radiance Fields (NeRFs) have shown promise in applications like view synthesis and depth estimation, but learning from multiview images faces inherent uncertainties. Current methods to quantify them are either heuristic or computationally demanding. We introduce BayesRays, a post-hoc framework to evaluate uncertainty in any pre-trained NeRF without modifying the training process. Our method establishes a volumetric uncertainty field using spatial perturbations and a Bayesian Laplace approximation. We derive our algorithm statistically and show its superior performance in key metrics and applications. Additional results available at: https://bayesrays.github.io.

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