Neural Pixel Composition: 3D-4D View Synthesis from Multi-Views
Abstract
We present Neural Pixel Composition (NPC), a novel approach for continuous 3D-4D view synthesis given only a discrete set of multi-view observations as input. Existing state-of-the-art approaches require dense multi-view supervision and an extensive computational budget. The proposed formulation reliably operates on sparse and wide-baseline multi-view imagery and can be trained efficiently within a few seconds to 10 minutes for hi-res (12MP) content, i.e., 200-400X faster convergence than existing methods. Crucial to our approach are two core novelties: 1) a representation of a pixel that contains color and depth information accumulated from multi-views for a particular location and time along a line of sight, and 2) a multi-layer perceptron (MLP) that enables the composition of this rich information provided for a pixel location to obtain the final color output. We experiment with a large variety of multi-view sequences, compare to existing approaches, and achieve better results in diverse and challenging settings. Finally, our approach enables dense 3D reconstruction from sparse multi-views, where COLMAP, a state-of-the-art 3D reconstruction approach, struggles.
Cite
@article{arxiv.2207.10663,
title = {Neural Pixel Composition: 3D-4D View Synthesis from Multi-Views},
author = {Aayush Bansal and Michael Zollhoefer},
journal= {arXiv preprint arXiv:2207.10663},
year = {2022}
}
Comments
A technical report on 3D-4D view synthesis (40 pages, 22 figures and 18 tables). High-resolution version of paper: http://www.aayushbansal.xyz/npc/npc_hi-res.pdf. Project page (containing video results): http://www.aayushbansal.xyz/npc/