CVJul 30, 2020

Crowdsampling the Plenoptic Function

arXiv:2007.15194v198 citations
Originality Incremental advance
AI Analysis

This addresses the problem of creating realistic 3D scenes from sparse, unregistered photos for applications like virtual tourism, though it builds incrementally on existing multi-plane image methods.

The paper tackles novel view synthesis from unstructured online photos under varying illumination, achieving real-time synthesis of photorealistic views with continuous spatial and lighting interpolation.

Many popular tourist landmarks are captured in a multitude of online, public photos. These photos represent a sparse and unstructured sampling of the plenoptic function for a particular scene. In this paper,we present a new approach to novel view synthesis under time-varying illumination from such data. Our approach builds on the recent multi-plane image (MPI) format for representing local light fields under fixed viewing conditions. We introduce a new DeepMPI representation, motivated by observations on the sparsity structure of the plenoptic function, that allows for real-time synthesis of photorealistic views that are continuous in both space and across changes in lighting. Our method can synthesize the same compelling parallax and view-dependent effects as previous MPI methods, while simultaneously interpolating along changes in reflectance and illumination with time. We show how to learn a model of these effects in an unsupervised way from an unstructured collection of photos without temporal registration, demonstrating significant improvements over recent work in neural rendering. More information can be found crowdsampling.io.

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