Predicting 3D structure by latent posterior sampling
Azmi Haider, Dan Rosenbaum

TL;DR
This paper introduces a probabilistic framework combining NeRF and diffusion models to perform 3D scene reconstruction from various incomplete or noisy observations, effectively modeling uncertainty.
Contribution
It presents a novel method that integrates NeRF-based 3D representations with diffusion-based posterior sampling for flexible and uncertain 3D reconstruction.
Findings
Successfully reconstructs 3D scenes from single-view, multi-view, and noisy data.
Models uncertainty effectively across different observation types.
Demonstrates accurate 3D predictions with diverse input data.
Abstract
The remarkable achievements of both generative models of 2D images and neural field representations for 3D scenes present a compelling opportunity to integrate the strengths of both approaches. In this work, we propose a methodology that combines a NeRF-based representation of 3D scenes with probabilistic modeling and reasoning using diffusion models. We view 3D reconstruction as a perception problem with inherent uncertainty that can thereby benefit from probabilistic inference methods. The core idea is to represent the 3D scene as a stochastic latent variable for which we can learn a prior and use it to perform posterior inference given a set of observations. We formulate posterior sampling using the score-based inference method of diffusion models in conjunction with a likelihood term computed from a reconstruction model that includes volumetric rendering. We train the model using a…
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